[Pas] Probability Abstract 86

pas at www.economia.unimi.it pas at www.economia.unimi.it
Mon May 2 17:11:43 CEST 2005


                                                                         
                         May 2, 2005
                                                                         
                         Letter 86

Probability Abstract Service



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3205. RANDOM GRAPHS WITH ARBITRARY I.I.D. DEGREES

Remco van der Hofstad and  Gerard Hooghiemstra and  Dmitri Znamenski

In this paper we study distances and connectivity properties of random 
graphs
with an arbitrary i.i.d. degree sequence. When the tail of the degree
distribution is regularly varying with exponent $1-\tau$ there are three
distinct cases: (i) $\tau>3$, where the degrees have finite variance, 
(ii)
$\tau\in (2,3)$, where the degrees have infinite variance, but finite 
mean, and
(iii) $\tau\in (1,2)$, where the degrees have infinite mean. These 
random
graphs can serve as models for complex networks where degree power laws 
are
observed. The distances between pairs of nodes in the three cases 
mentioned
above have been studied in three previous publications, and we survey 
the
results obtained there. Apart from the critical cases $\tau=1$, 
$\tau=2$ and
$\tau=3$, this completes the scaling picture. We explain the results
heuristically and describe related work and open problems. We also 
compare the
behavior in this model to Internet data, where a degree power law with 
exponent
$\tau\approx 2.2$ is observed.
   Furthermore, in this paper we derive results concerning the connected
components and the diameter. We give a criterion when there exists a 
unique
largest connected component of size proportional to the size of the 
graph, and
study sizes of the other connected components. Also, we show that for 
$\tau\in
(2,3)$, which is most often observed in real networks, the diameter in 
this
model grows much faster than the typical distance between two arbitrary 
nodes.


http://front.math.ucdavis.edu/math.PR/0502580

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3206. THE SINGLE SERVER QUEUE AND THE STORAGE MODEL: LARGE DEVIATIONS 
AND  FIXED POINTS

Moez Draief

We consider the coupling of a single server queue and a storage model 
defined
as a Queue/Store model in Draief et al. 2004. We establish that if the 
input
variables both arrivals to the queue and to the store satisfy large 
deviations
principles and are linked through an {\em exponential tilting} than the 
output
variables (departures from each system) satisfy large deviations 
principles
with the same rate function. This generalizes to the context of large
deviations the extension of Burke's Theorem derived in Draief et al. 
2004.


http://front.math.ucdavis.edu/math.PR/0503016

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3207. SUBEXPONENTIAL ASYMPTOTICS OF HYBRID FLUID AND RUIN MODELS

Bert Zwart and  Sem Borst and Krzystof Debicki

We investigate the tail asymptotics of the supremum of X(t)+Y(t)-ct, 
where
X={X(t),t\geq 0} and Y={Y(t),t\geq 0} are two independent stochastic 
processes.
We assume that the process Y has subexponential characteristics and 
that the
process X is more regular in a certain sense than Y. A key issue 
examined in
earlier studies is under what conditions the process X contributes to 
large
values of the supremum only through its average behavior. The present 
paper
studies various scenarios where the latter is not the case, and the 
process X
shows some form of ``atypical'' behavior as well. In particular, we 
consider a
fluid model fed by a Gaussian process X and an (integrated) On-Off 
process Y.
We show that, depending on the model parameters, the Gaussian process 
may
contribute to the tail asymptotics by its moderate deviations, large
deviations, or oscillatory behavior.


http://front.math.ucdavis.edu/math.PR/0503482

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3208. DEVIATION INEQUALITIES VIA COUPLING FOR STOCHASTIC PROCESSES AND 
RANDOM  FIELDS

J.-R. Chazottes and  P. Collet and  C. Kuelske and  F. Redig

We present a new and simple approach to deviation inequalities for
non-product measures, i.e., for dependent random variables. Our method 
is based
on coupling. We illustrate our abstract results with chains with 
complete
connections and Gibbsian random fields, both at high and low 
temperature.


http://front.math.ucdavis.edu/math.PR/0503483

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3209. AN APPROXIMATE SAMPLING FORMULA UNDER GENETIC HITCHHIKING

A. M. Etheridge and  P. Pfaffelhuber and A. Wakolbinger

For a genetic locus carrying a strongly beneficial allele which has just
fixed in a large population we study the ancestry at a linked neutral 
locus.
During this ''selective sweep'' the linkage between the two loci is 
broken up
by recombination, and the ancestry at the neutral locus is modelled by a
structured coalescent in a random background. For large selection 
coefficients
$\alpha$ and under an appropriate scaling of the recombination rate, we 
derive
a sampling formula with an order of accuracy of $O((\log\alpha)^{-2})$ 
in
probability. In particular we see that, with this order of accuracy, in 
a
sample of fixed size there are at most two non-singleton families of
individuals which are identi cal by descent at the neutral locus from 
the
beginning of the sweep. This refines a formula going back to the work of
Maynard Smith and Haigh, and co mplements recent work of Schweinsberg 
and
Durrett on selective sweeps in the Moran model.


http://front.math.ucdavis.edu/math.PR/0503485

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3210. LARGE DEVIATIONS OF A MODIFIED JACKSON NETWORK: STABILITY AND 
ROUGH  ASYMPTOTICS

Robert D. Foley and David R. McDonald

Consider a modified, stable, two node Jackson network where server 2 
helps
server 1 when server 2 is idle. The probability of a large deviation of 
the
number of customers at node one can be calculated using the flat 
boundary
theory of Schwartz and Weiss [Large Deviations Performance Analysis 
(1994),
  Chapman and Hall, New York]. Surprisingly, however, these calculations 
show
that the proportion of time spent on the boundary, where server 2 is 
idle, may
be zero. This is in sharp contrast to the unmodified Jackson network 
which
spends a nonzero proportion of time on this boundary.


http://front.math.ucdavis.edu/math.PR/0503487

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3211. BRIDGES AND NETWORKS: EXACT ASYMPTOTICS

Robert D. Foley and David R. McDonald

We extend the Markov additive methodology developed in [Ann. Appl. 
Probab. 9
(1999) 110-145, Ann. Appl. Probab. 11 (2001) 596-607] to obtain the 
sharp
asymptotics of the steady state probability of a queueing network when 
one of
the nodes gets large. We focus on a new phenomenon we call a bridge. 
The bridge
cases occur when the Markovian part of the twisted Markov additive 
process is
one null recurrent or one transient, while the jitter cases treated in 
[Ann.
Appl. Probab. 9 (1999) 110-145, Ann. Appl. Probab. 11 (2001) 596-607] 
occur
when the Markovian part is (one) positive recurrent. The asymptotics of 
the
steady state is an exponential times a polynomial term in the bridge 
case, but
is purely exponential in the jitter case. We apply this theory to a 
modified,
stable, two node Jackson network where server two helps server one when 
server
two is idle. We derive the sharp asymptotics of the steady state 
distribution
of the number of customers queued at each node as the number of 
customers
queued at the server one grows large. In so doing we get an intuitive
understanding of the companion paper [Ann. Appl. Probab. 15 (2005) 
519-541]
which gives a large deviation analysis of this problem using the flat 
boundary
theory in the book by Shwartz and Weiss. Unlike the (unscaled) large 
deviation
path of a Jackson network which jitters along the boundary, the 
unscaled large
deviation path of the modified network tries to avoid the boundary 
where server
two helps server one (and forms a bridge).


http://front.math.ucdavis.edu/math.PR/0503488

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3212. UPPER BOUNDS FOR SPATIAL POINT PROCESS APPROXIMATIONS

Dominic Schuhmacher

We consider the behavior of spatial point processes when subjected to a 
class
of linear transformations indexed by a variable T. It was shown in 
Ellis [Adv.
in Appl. Probab. 18 (1986) 646-659] that, under mild assumptions, the
transformed processes behave approximately like Poisson processes for 
large T.
In this article, under very similar assumptions, explicit upper bounds 
are
given for the d_2-distance between the corresponding point process
distributions. A number of related results, and applications to kernel 
density
estimation and long range dependence testing are also presented. The 
main
results are proved by applying a generalized Stein-Chen method to 
discretized
versions of the point processes.


http://front.math.ucdavis.edu/math.PR/0503491

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3213. NOISE STABILITY OF FUNCTIONS WITH LOW INFLUENCES: INVARIANCE AND  
OPTIMALITY

Elchanan Mossel and Ryan O'Donnell and Krzysztof Oleszkiewicz

In this paper we study functions with low influences on product 
probability
spaces. The analysis of boolean functions with low influences has 
become a
central problem in discrete Fourier analysis. It is motivated by 
fundamental
questions arising from the construction of probabilistically checkable 
proofs
in theoretical computer science and from problems in the theory of 
social
choice in economics.
   We prove an invariance principle for multilinear polynomials with low
influences and bounded degree; it shows that under mild conditions the
distribution of such polynomials is essentially invariant for all 
product
spaces. Ours is one of the very few known non-linear invariance 
principles. It
has the advantage that its proof is simple and that the error bounds are
explicit. We also show that the assumption of bounded degree can be 
eliminated
if the polynomials are slightly ``smoothed''; this extension is 
essential for
our applications to ``noise stability''-type problems.
   In particular, as applications of the invariance principle we prove 
two
conjectures: the ``Majority Is Stablest'' conjecture from theoretical 
computer
science, which was the original motivation for this work, and the ``It 
Ain't
Over Till It's Over'' conjecture from social choice theory.


http://front.math.ucdavis.edu/math.PR/0503503

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3214. LOGARITHMIC SOBOLEV INEQUALITY FOR LOG-CONCAVE MEASURE FROM  
PREKOPA-LEINDLER INEQUALITY

Ivan Gentil

We develop in this paper an amelioration of the method given by S. 
Bobkov and
M. Ledoux in GAFA (2000). We prove by Prekopa-Leindler Theorem an 
optimal
modified logarithmic Sobolev inequality adapted for all log-concave 
measure on
$\dR^n$. This inequality implies results proved by Bobkov and Ledoux, 
the
Euclidean Logarithmic Sobolev inequality generalized in the last years 
and it
also implies some convex logarithmic Sobolev inequalities for large 
entropy.


http://front.math.ucdavis.edu/math.FA/0503476

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3215. EQUILIBRIUM GLAUBER AND KAWASAKI DYNAMICS OF CONTINUOUS PARTICLE 
SYSTEMS

Yu. G. Kondratiev and  E. Lytvynov and  M. R\"ockner

We construct two types of equilibrium dynamics of infinite particle 
systems
in a Riemannian manifold $X$. These dynamics are analogs of the Glauber,
respectively Kawasaki dynamics of lattice spin systems. The Glauber 
dynamics
now is a process where interacting particles randomly appear and 
disappear,
i.e., it is a birth-and-death process in $X$, while in the Kawasaki 
dynamics
interacting particles randomly jump over $X$. We establish conditions 
on a
priori explicitly given symmetrizing measures and generators of both 
dynamics
under which corresponding conservative Markov processes exist.


http://front.math.ucdavis.edu/math.PR/0503042

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3216. THE STEPPING STONE MODEL. II: GENEALOGIES AND THE INFINITE SITES 
MODEL

Iljana Zahle and  J. Theodore Cox and Richard Durrett

This paper extends earlier work by Cox and Durrett, who studied the
coalescence times for two lineages in the stepping stone model on the
two-dimensional torus. We show that the genealogy of a sample of size n 
is
given by a time change of Kingman's coalescent. With DNA sequence data 
in mind,
we investigate mutation patterns under the infinite sites model, which 
assumes
that each mutation occurs at a new site. Our results suggest that the 
spatial
structure of the human population contributes to the haplotype 
structure and a
slower than expected decay of genetic correlation with distance 
revealed by
recent studies of the human genome.


http://front.math.ucdavis.edu/math.PR/0503512

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3217. RENEWAL THEORY AND COMPUTABLE CONVERGENCE RATES FOR GEOMETRICALLY 
  ERGODIC MARKOV CHAINS

Peter H. Baxendale

We give computable bounds on the rate of convergence of the transition
probabilities to the stationary distribution for a certain class of
geometrically ergodic Markov chains. Our results are different from 
earlier
estimates of Meyn and Tweedie, and from estimates using coupling, 
although we
start from essentially the same assumptions of a drift condition toward 
a
``small set.'' The estimates show a noticeable improvement on existing 
results
if the Markov chain is reversible with respect to its stationary 
distribution,
and especially so if the chain is also positive. The method of proof 
uses the
first-entrance-last-exit decomposition, together with new quantitative 
versions
of a result of Kendall from discrete renewal theory.


http://front.math.ucdavis.edu/math.PR/0503515

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3218. UTILITY MAXIMIZATION WITH A STOCHASTIC CLOCK AND AN UNBOUNDED 
RANDOM  ENDOWMENT

Gordan Zitkovic

We introduce a linear space of finitely additive measures to treat the
problem of optimal expected utility from consumption under a stochastic 
clock
and an unbounded random endowment process. In this way we establish 
existence
and uniqueness for a large class of utility-maximization problems 
including the
classical ones of terminal wealth or consumption, as well as the 
problems that
depend on a random time horizon or multiple consumption instances. As an
example we explicitly treat the problem of maximizing the logarithmic 
utility
of a consumption stream, where the local time of an Ornstein-Uhlenbeck 
process
acts as a stochastic clock.


http://front.math.ucdavis.edu/math.PR/0503516

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3219. RECONSTRUCTING A TWO-COLOR SCENERY BY OBSERVING IT ALONG A SIMPLE 
RANDOM  WALK PATH

Heinrich Matzinger

Let {\xi (n)}_{n\in Z} be a two-color random scenery, that is, a random
coloring of Z in two colors, such that the \xi (i)'s are i.i.d. 
Bernoulli
variables with parameter \tfrac12. Let {S(n)}_{n\in N} be a symmetric 
random
walk starting at 0. Our main result shows that a.s., \xi \circ S (the
composition of \xi and S) determines \xi up to translation and 
reflection. In
other words, by observing the scenery \xi along the random walk path S, 
we can
a.s. reconstruct \xi up to translation and reflection. This result 
gives a
positive answer to the question of H. Kesten of whether one can a.s. 
detect a
single defect in almost every two-color random scenery by observing it 
only
along a random walk path.


http://front.math.ucdavis.edu/math.PR/0503517

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3220. A DIFFUSION MODEL OF SCHEDULING CONTROL IN QUEUEING SYSTEMS WITH 
MANY  SERVERS

Rami Atar

This paper studies a diffusion model that arises as the limit of a 
queueing
system scheduling problem in the asymptotic heavy traffic regime of 
Halfin and
Whitt. The queueing system consists of several customer classes and many
servers working in parallel, grouped in several stations. Servers in 
different
stations offer service to customers of each class at possibly different 
rates.
The control corresponds to selecting what customer class each server 
serves at
each time. The diffusion control problem does not seem to have explicit
solutions and therefore a characterization of optimal solutions via the
Hamilton-Jacobi-Bellman equation is addressed. Our main result is the 
existence
and uniqueness of solutions of the equation. Since the model is set on 
an
unbounded domain and the cost per unit time is unbounded, the analysis 
requires
estimates on the state process that are subexponential in the time 
variable. In
establishing these estimates, a key role is played by an integral 
formula that
relates queue length and idle time processes, which may be of 
independent
interest.


http://front.math.ucdavis.edu/math.PR/0503518

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3221. EXACT AND APPROXIMATE RESULTS FOR DEPOSITION AND ANNIHILATION 
PROCESSES  ON GRAPHS

Mathew D. Penrose and Aidan Sudbury

We consider random sequential adsorption processes where the initially 
empty
sites of a graph are irreversibly occupied, in random order, either by 
monomers
which block neighboring sites, or by dimers. We also consider a process 
where
initially occupied sites annihilate their neighbors at random times. We 
verify
that these processes are well defined on infinite graphs, and derive 
forward
equations governing joint vacancy/occupation probabilities. Using 
these, we
derive exact formulae for occupation probabilities and pair 
correlations in
Bethe lattices. For the blocking and annihilation processes we also 
prove
positive correlations between sites an even distance apart, and for 
blocking we
derive rigorous lower bounds for the site occupation probability in 
lattices,
including a lower bound of 1/3 for Z^2. We also give normal 
approximation
results for the number of occupied sites in a large finite graph.


http://front.math.ucdavis.edu/math.PR/0503519

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3222. NEAR-INTEGRATED GARCH SEQUENCES

Istvan Berkes and  Lajos Horvath and Piotr Kokoszka

Motivated by regularities observed in time series of returns on 
speculative
assets, we develop an asymptotic theory of GARCH(1,1) processes {y_k} 
defined
by the equations y_k=\sigma_k\epsilon_k, \sigma_k^2=\omega +\alpha
y_{k-1}^2+\beta \sigma_{k-1}^2 for which the sum \alpha +\beta 
approaches unity
as the number of available observations tends to infinity. We call such
sequences near-integrated. We show that the asymptotic behavior of
near-integrated GARCH(1,1) processes critically depends on the sign of 
\gamma
:=\alpha +\beta -1. We find assumptions under which the solutions 
exhibit
increasing oscillations and show that these oscillations grow 
approximately
like a power function if \gamma \leq 0 and exponentially if \gamma >0. 
We
establish an additive representation for the near-integrated GARCH(1,1)
processes which is more convenient to use than the traditional 
multiplicative
Volterra series expansion.


http://front.math.ucdavis.edu/math.PR/0503520

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3223. ASYMPTOTICS IN RANDOMIZED URN MODELS

Zhi-Dong Bai and Feifang Hu

This paper studies a very general urn model stimulated by designs in 
clinical
trials, where the number of balls of different types added to the urn 
at trial
n depends on a random outcome directed by the composition at trials
1,2,...,n-1. Patient treatments are allocated according to types of 
balls. We
establish the strong consistency and asymptotic normality for both the 
urn
composition and the patient allocation under general assumptions on 
random
generating matrices which determine how balls are added to the urn. 
Also we
obtain explicit forms of the asymptotic variance-covariance matrices of 
both
the urn composition and the patient allocation. The conditions on the
nonhomogeneity of generating matrices are mild and widely satisfied in
applications. Several applications are also discussed.


http://front.math.ucdavis.edu/math.PR/0503521

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3224. A BERRY-ESSEEN THEOREM FOR FEYNMAN-KAC AND INTERACTING PARTICLE 
MODELS

Pierre Del Moral and Samy Tindel

In this paper we investigate the speed of convergence of the 
fluctuations of
a general class of Feynman-Kac particle approximation models. We design 
an
original approach based on new Berry-Esseen type estimates for abstract
martingale sequences combined with original exponential concentration 
estimates
of interacting processes. These results extend the corresponding 
statements in
the classical theory and apply to a class of branching and genealogical
path-particle models arising in nonlinear filtering literature as well 
as in
statistical physics and biology.


http://front.math.ucdavis.edu/math.PR/0503522

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3225. PERIODIC COPOLYMERS AT SELECTIVE INTERFACES: A LARGE DEVIATIONS 
APPROACH

Erwin Bolthausen and Giambattista Giacomin

We analyze a (1+1)-dimension directed random walk model of a polymer 
dipped
in a medium constituted by two immiscible solvents separated by a flat
interface. The polymer chain is heterogeneous in the sense that a single
monomer may energetically favor one or the other solvent. We focus on 
the case
in which the polymer types are periodically distributed along the chain 
or, in
other words, the polymer is constituted of identical stretches of fixed 
length.
The phenomenon that one wants to analyze is the localization at the 
interface:
energetically favored configurations place most of the monomers in the
preferred solvent and this can be done only if the polymer sticks close 
to the
interface. We investigate, by means of large deviations, the 
energy-entropy
competition that may lead, according to the value of the parameters (the
strength of the coupling between monomers and solvents and an asymmetry
parameter), to localization. We express the free energy of the system 
in terms
of a variational formula that we can solve. We then use the result to 
analyze
the phase diagram.


http://front.math.ucdavis.edu/math.PR/0503523

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3226. HITTING DISTRIBUTIONS OF GEOMETRIC BROWNIAN MOTION

T. Byczkowski and M. Ryznar

Let $\tau$ be the first hitting time of the point 1 by the geometric 
Brownian
motion $X(t)= x \exp(B(t)-2\mu t)$ with drift $\mu \geq 0$ starting 
from $x>1$.
Here $B(t)$ is the Brownian motion starting from 0 with $E^0 B^2(t) = 
2t$. We
provide an integral formula for the density function of the stopped 
exponential
functional $A(\tau)=\int_0^\tau X^2(t) dt$ and determine its asymptotic
behaviour at infinity. Although we basically rely on methods developed 
in
\cite{BGS}, the present paper also covers the case of arbitrary drifts 
$\mu
\geq 0$ and provides a significant unification and extension of results 
of the
above-mentioned paper. As a corollary we provide an integral formula 
and give
asymptotic behaviour at infinity of the Poisson kernel for half-spaces 
for
Brownian motion with drift in real hyperbolic spaces of arbitrary 
dimension.


http://front.math.ucdavis.edu/math.PR/0503060

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3227. MASS EXTINCTIONS: AN ALTERNATIVE TO THE ALLEE EFFECT

Rinaldo B. Schinazi

We introduce a spatial stochastic process on the lattice Z^d to model 
mass
extinctions. Each site of the lattice may host a flock of up to N 
individuals.
Each individual may give birth to a new individual at the same site at 
rate
\phi until the maximum of N individuals has been reached at the site. 
Once the
flock reaches N individuals, then, and only then, it starts giving 
birth on
each of the 2d neighboring sites at rate \lambda(N). Finally, disaster 
strikes
at rate 1, that is, the whole flock disappears. Our model shows that, 
at least
in theory, there is a critical maximum flock size above which a species 
is
certain to disappear and below which it may survive.


http://front.math.ucdavis.edu/math.PR/0503525

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3228. TAIL OF A LINEAR DIFFUSION WITH MARKOV SWITCHING

Benoite de Saporta and Jian-Feng Yao

Let Y be an Ornstein-Uhlenbeck diffusion governed by a stationary and 
ergodic
Markov jump process X: dY_t=a(X_t)Y_t dt+\sigma(X_t) dW_t, Y_0=y_0. 
Ergodicity
conditions for Y have been obtained. Here we investigate the tail 
propriety of
the stationary distribution of this model. A characterization of either 
heavy
or light tail case is established. The method is based on a renewal 
theorem for
systems of equations with distributions on R.


http://front.math.ucdavis.edu/math.PR/0503527

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3229. THE LONG-RUN BEHAVIOR OF THE STOCHASTIC REPLICATOR DYNAMICS

Lorens A. Imhof

Fudenberg and Harris' stochastic version of the classical replicator 
dynamics
is considered. The behavior of this diffusion process in the presence 
of an
evolutionarily stable strategy is investigated. Moreover, extinction of
dominated strategies and stochastic stability of strict Nash equilibria 
are
studied. The general results are illustrated in connection with a 
discrete war
of attrition. A persistence result for the maximum effort strategy is 
obtained
and an explicit expression for the evolutionarily stable strategy is 
derived.


http://front.math.ucdavis.edu/math.PR/0503529

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3230. OPTIMAL POINTWISE APPROXIMATION OF SDES BASED ON BROWNIAN MOTION 
AT  DISCRETE POINTS

Thomas Muller-Gronbach

We study pathwise approximation of scalar stochastic differential 
equations
at a single point. We provide the exact rate of convergence of the 
minimal
errors that can be achieved by arbitrary numerical methods that are 
based (in a
measurable way) on a finite number of sequential observations of the 
driving
Brownian motion. The resulting lower error bounds hold in particular 
for all
methods that are implementable on a computer and use a random number 
generator
to simulate the driving Brownian motion at finitely many points. Our 
analysis
shows that approximation at a single point is strongly connected to an
integration problem for the driving Brownian motion with a random 
weight.
Exploiting general ideas from estimation of weighted integrals of 
stochastic
processes, we introduce an adaptive scheme, which is easy to implement 
and
performs asymptotically optimally.


http://front.math.ucdavis.edu/math.PR/0503531

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3231. QUANTITATIVE BOUNDS ON CONVERGENCE OF TIME-INHOMOGENEOUS MARKOV 
CHAINS

R. Douc and  E. Moulines and Jeffrey S. Rosenthal

Convergence rates of Markov chains have been widely studied in recent 
years.
In particular, quantitative bounds on convergence rates have been 
studied in
various forms by Meyn and Tweedie [Ann. Appl. Probab. 4 (1994) 
981-1101],
Rosenthal [J. Amer. Statist. Assoc. 90 (1995) 558-566], Roberts and 
Tweedie
[Stochastic Process. Appl. 80 (1999) 211-229], Jones and Hobert 
[Statist. Sci.
16 (2001) 312-334] and Fort [Ph.D. thesis (2001) Univ. Paris VI]. In 
this
paper, we extend a result of Rosenthal [J. Amer. Statist. Assoc. 90 
(1995)
558-566] that concerns quantitative convergence rates for 
time-homogeneous
Markov chains. Our extension allows us to consider f-total variation 
distance
(instead of total variation) and time-inhomogeneous Markov chains. We 
apply our
results to simulated annealing.


http://front.math.ucdavis.edu/math.PR/0503532

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3232. ON STATIONARITY OF LAGRANGIAN OBSERVATIONS OF PASSIVE TRACER 
VELOCITY IN  A COMPRESSIBLE ENVIRONMENT

Tomasz Komorowski and Grzegorz Krupa

We study the transport of a passive tracer particle in a steady strongly
mixing flow with a nonzero mean velocity. We show that there exists a
probability measure under which the particle Lagrangian velocity 
process is
stationary. This measure is absolutely continuous with respect to the
underlying probability measure for the Eulerian flow.


http://front.math.ucdavis.edu/math.PR/0503534

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3233. EXTENDING CHACON-WALSH: MINIMALITY AND GENERALISED STARTING  
DISTRIBUTIONS

Alexander Cox

In this paper we consider the Skorokhod embedding problem for general
starting and target measures. In particular, we provide necessary and
sufficient conditions for a stopping time to be minimal in the sense of
Monroe(1972). The resulting conditions have a nice interpretation in the
graphical picture of Chacon and Walsh. Further, we demonstrate how the
construction of Chacon and Walsh can be extended to any (integrable) 
starting
and target distributions, allowing the constructions of Azema-Yor, 
Vallois and
Jacka to be viewed in this context, and thus extended easily to general
starting and target distributions. In particular, we describe in detail 
the
extension of the Azema-Yor embedding in this context, and show that it 
retains
its optimality property.


http://front.math.ucdavis.edu/math.PR/0503535

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3234. EXPONENTIAL PENALTY FUNCTION CONTROL OF LOSS NETWORKS

Garud Iyengar and Karl Sigman

We introduce penalty-function-based admission control policies to
approximately maximize the expected reward rate in a loss network. These
control policies are easy to implement and perform well both in the 
transient
period as well as in steady state. A major advantage of the penalty 
approach is
that it avoids solving the associated dynamic program. However, a 
disadvantage
of this approach is that it requires the capacity requested by 
individual
requests to be sufficiently small compared to total available capacity. 
We
first solve a related deterministic linear program (LP) and then 
translate an
optimal solution of the LP into an admission control policy for the loss
network via an exponential penalty function. We show that the penalty 
policy is
a target-tracking policy--it performs well because the optimal solution 
of the
LP is a good target. We demonstrate that the penalty approach can be 
extended
to track arbitrarily defined target sets. Results from preliminary 
simulation
studies are included.


http://front.math.ucdavis.edu/math.PR/0503536

---------------------------------------------------------------

3235. ELEMENTARY BOUNDS ON POINCARE AND LOG-SOBOLEV CONSTANTS FOR 
DECOMPOSABLE  MARKOV CHAINS

Mark Jerrum and  Jung-Bae Son and  Prasad Tetali and Eric Vigoda

We consider finite-state Markov chains that can be naturally decomposed 
into
smaller ``projection'' and ``restriction'' chains. Possibly this 
decomposition
will be inductive, in that the restriction chains will be smaller 
copies of the
initial chain. We provide expressions for Poincare (resp. log-Sobolev)
constants of the initial Markov chain in terms of Poincare (resp. 
log-Sobolev)
constants of the projection and restriction chains, together with 
further a
parameter. In the case of the Poincare constant, our bound is always at 
least
as good as existing ones and, depending on the value of the extra 
parameter,
may be much better. There appears to be no previously published 
decomposition
result for the log-Sobolev constant. Our proofs are elementary and
self-contained.


http://front.math.ucdavis.edu/math.PR/0503537

---------------------------------------------------------------

3236. RUIN PROBABILITIES AND OVERSHOOTS FOR GENERAL LEVY INSURANCE RISK 
  PROCESSES

Claudia Kluppelberg and  Andreas E. Kyprianou and Ross A. Maller

We formulate the insurance risk process in a general Levy process 
setting,
and give general theorems for the ruin probability and the asymptotic
distribution of the overshoot of the process above a high level, when 
the
process drifts to -\infty a.s. and the positive tail of the Levy 
measure, or of
the ladder height measure, is subexponential or, more generally, 
convolution
equivalent. Results of Asmussen and Kluppelberg [Stochastic Process. 
Appl. 64
(1996) 103-125] and Bertoin and Doney [Adv. in Appl. Probab. 28 (1996) 
207-226]
for ruin probabilities and the overshoot in random walk and compound 
Poisson
models are shown to have analogues in the general setup. The identities 
we
derive open the way to further investigation of general renewal-type 
properties
of Levy processes.


http://front.math.ucdavis.edu/math.PR/0503539

---------------------------------------------------------------

3237. COMBINATORIAL ASPECTS OF MATRIX MODELS

Alice Guionnet and \'Edouard Maurel-Segala

We show that under reasonably general assumptions, the first order
asymptotics of the free energy of matrix models are generating 
functions for
colored planar maps. This is based on the fact that solutions of the
differential Schwinger-Dyson equations are, by nature, generating 
functions for
enumerating planar maps, a remark which bypasses the use of Gaussian 
calculus.


http://front.math.ucdavis.edu/math.PR/0503064

---------------------------------------------------------------

3238. STABILITY IN DISTRIBUTION OF RANDOMLY PERTURBED QUADRATIC MAPS AS 
MARKOV  PROCESSES

Rabi Bhattacharya and Mukul Majumdar

Iteration of randomly chosen quadratic maps defines a Markov process:
X_{n+1}=\epsilon_{n+1}X_n(1-X_n), where \epsilon_n are i.i.d. with 
values in
the parameter space [0,4] of quadratic maps F_{\theta}(x)=\theta 
x(1-x). Its
study is of significance as an important Markov model, with 
applications to
problems of optimization under uncertainty arising in economics. In this
article a broad criterion is established for positive Harris recurrence 
of X_n.


http://front.math.ucdavis.edu/math.PR/0503540

---------------------------------------------------------------

3239. INTERPLAY BETWEEN DIVIDEND RATE AND BUSINESS CONSTRAINTS FOR A 
FINANCIAL  CORPORATION

Tahir Choulli and  Michael Taksar and Xun Yu Zhou

We study a model of a corporation which has the possibility to choose 
various
production/business policies with different expected profits and risks. 
In the
model there are restrictions on the dividend distribution rates as well 
as
restrictions on the risk the company can undertake. The objective is to
maximize the expected present value of the total dividend 
distributions. We
outline the corresponding Hamilton-Jacobi-Bellman equation, compute 
explicitly
the optimal return function and determine the optimal policy. As a 
consequence
of these results, the way the dividend rate and business constraints 
affect the
optimal policy is revealed. In particular, we show that under certain
relationships between the constraints and the exogenous parameters of 
the
random processes that govern the returns, some business activities 
might be
redundant, that is, under the optimal policy they will never be used in 
any
scenario.


http://front.math.ucdavis.edu/math.PR/0503541

---------------------------------------------------------------

3240. LIMIT THEOREMS FOR MIXED MAX-SUM PROCESSES WITH RENEWAL STOPPING

Dmitrii S. Silvestrov and Jozef L. Teugels

This article is devoted to the investigation of limit theorems for mixed
max-sum processes with renewal type stopping indexes. Limit theorems of 
weak
convergence type are obtained as well as functional limit theorems.


http://front.math.ucdavis.edu/math.PR/0503543

---------------------------------------------------------------

3241. CONTINUUM PERCOLATION WITH STEPS IN AN ANNULUS

Paul Balister and  Bela Bollobas and Mark Walters

Let A be the annulus in R^2 centered at the origin with inner and outer 
radii
r(1-\epsilon) and r, respectively. Place points {x_i} in R^2 according 
to a
Poisson process with intensity 1 and let G_A be the random graph with 
vertex
set {x_i} and edges x_ix_j whenever x_i-x_j\in A. We show that if the 
area of A
is large, then G_A almost surely has an infinite component. Moreover, 
if we fix
\epsilon, increase r and let n_c=n_c(\epsilon) be the area of A when 
this
infinite component appears, then n_c\to1 as \epsilon \to 0. This is in 
contrast
to the case of a ``square'' annulus where we show that n_c is bounded 
away from
1.


http://front.math.ucdavis.edu/math.PR/0503544

---------------------------------------------------------------

3242. A MICROSCOPIC PROBABILISTIC DESCRIPTION OF A LOCALLY REGULATED  
POPULATION AND MACROSCOPIC APPROXIMATIONS

Nicolas Fournier and Sylvie Meleard

We consider a discrete model that describes a locally regulated spatial
population with mortality selection. This model was studied in parallel 
by
Bolker and Pacala and Dieckmann, Law and Murrell. We first generalize 
this
model by adding spatial dependence. Then we give a pathwise description 
in
terms of Poisson point measures. We show that different normalizations 
may lead
to different macroscopic approximations of this model. The first 
approximation
is deterministic and gives a rigorous sense to the number density. The 
second
approximation is a superprocess previously studied by Etheridge. 
Finally, we
study in specific cases the long time behavior of the system and of its
deterministic approximation.


http://front.math.ucdavis.edu/math.PR/0503546

---------------------------------------------------------------

3243. STABILITY AND THE LYAPOUNOV EXPONENT OF THRESHOLD AR-ARCH MODELS

Daren B. H. Cline and Huay-min H. Pu

The Lyapounov exponent and sharp conditions for geometric ergodicity are
determined of a time series model with both a threshold autoregression 
term and
threshold autoregressive conditional heteroscedastic (ARCH) errors.
  The conditions require studying or simulating the behavior of a 
bounded,
ergodic Markov chain. The method of proof is based on a new approach, 
called
the piggyback method, that exploits the relationship between the time 
series
and the bounded chain. The piggyback method also provides a means for
evaluating the Lyapounov exponent by simulation and provides a new 
perspective
on moments, illuminating recent results for the distribution tails of 
GARCH
models.


http://front.math.ucdavis.edu/math.PR/0503547

---------------------------------------------------------------

3244. NORMAL APPROXIMATION FOR HIERARCHICAL STRUCTURES

Larry Goldstein

Given F:[a,b]^k\to [a,b] and a nonconstant X_0 with P(X_0\in [a,b])=1, 
define
the hierarchical sequence of random variables {X_n}_{n\ge 0} by
X_{n+1}=F(X_{n,1},...,X_{n,k}), where X_{n,i} are i.i.d. as X_n. Such 
sequences
arise from hierarchical structures which have been extensively studied 
in the
physics literature to model, for example, the conductivity of a random 
medium.
Under an averaging and smoothness condition on nontrivial F, an upper 
bound of
the form C\gamma^n for 0<\gamma<1 is obtained on the Wasserstein 
distance
between the standardized distribution of X_n and the normal. The 
results apply,
for instance, to random resistor networks and, introducing the notion 
of strict
averaging, to hierarchical sequences generated by certain compositions. 
As an
illustration, upper bounds on the rate of convergence to the normal are 
derived
for the hierarchical sequence generated by the weighted diamond lattice 
which
is shown to exhibit a full range of convergence rate behavior.


http://front.math.ucdavis.edu/math.PR/0503549

---------------------------------------------------------------

3245. ON THE SUPER REPLICATION PRICE OF UNBOUNDED CLAIMS

Sara Biagini and Marco Frittelli

In an incomplete market the price of a claim f in general cannot be 
uniquely
identified by no arbitrage arguments. However, the ``classical'' super
replication price is a sensible indicator of the (maximum selling) 
value of the
claim. When f satisfies certain pointwise conditions (e.g., f is 
bounded from
below), the super replication price is equal to sup_QE_Q[f], where Q 
varies on
the whole set of pricing measures. Unfortunately, this price is often 
too high:
a typical situation is here discussed in the examples. We thus define 
the less
expensive weak super replication price and we relax the requirements on 
f by
asking just for ``enough'' integrability conditions. By building up a 
proper
duality theory, we show its economic meaning and its relation with the
investor's preferences. Indeed, it turns out that the weak super 
replication
price of f coincides with sup_{Q\in M_{\Phi}}E_Q[f], where M_{\Phi} is 
the
class of pricing measures with finite generalized entropy (i.e., E[\Phi
(\frac{dQ}{dP})]<\infty) and where \Phi is the convex conjugate of the 
utility
function of the investor.


http://front.math.ucdavis.edu/math.PR/0503550

---------------------------------------------------------------

3246. LIMIT LAWS OF ESTIMATORS FOR CRITICAL MULTI-TYPE GALTON-WATSON 
PROCESSES

Zhiyi Chi

We consider the asymptotics of various estimators based on a large 
sample of
branching trees from a critical multi-type Galton-Watson process, as 
the sample
size increases to infinity. The asymptotics of additive functions of 
trees,
such as sizes of trees and frequencies of types within trees, a 
higher-order
asymptotic of the ``relative frequency'' estimator of the left 
eigenvector of
the mean matrix, a higher-order joint asymptotic of the maximum 
likelihood
estimators of the offspring probabilities and the consistency of an 
estimator
of the right eigenvector of the mean matrix, are established.


http://front.math.ucdavis.edu/math.PR/0503552

---------------------------------------------------------------

3247. ON SAMPLING OF STATIONARY INCREMENT PROCESSES

J. M. P. Albin

Under a complex technical condition, similar to such used in extreme 
value
theory, we find the rate q(\epsilon)^{-1} at which a stochastic process 
with
stationary increments \xi should be sampled, for the sampled process
\xi(\lfloor\cdot /q(\epsilon)\rfloor q(\epsilon)) to deviate from \xi 
by at
most \epsilon, with a given probability, asymptotically as \epsilon
\downarrow0. The canonical application is to discretization errors in 
computer
simulation of stochastic processes.


http://front.math.ucdavis.edu/math.PR/0503554

---------------------------------------------------------------

3248. RECURRENCE OF SIMPLE RANDOM WALK ON $Z^2$ IS DYNAMICALLY SENSITIVE

Christopher Hoffman

Benjamini, Haggstrom, Peres and Steif introduced the concept of a 
dynamical
random walk. This is a continuous family of random walks, {S_n(t)}. 
Benjamini
et. al. proved that if d=3 or d=4 then there is an exceptional set of t 
such
that {S_n(t)} returns to the origin infinitely often. In this paper we 
consider
a dynamical random walk on Z^2. We show that with probability one there 
exists
t such that {S_n(t)} never returns to the origin. This exceptional set 
of times
has dimension one. This proves a conjecture of Benjamini et. al.


http://front.math.ucdavis.edu/math.PR/0503065

---------------------------------------------------------------

3249. SPECTRAL PROPERTIES OF THE TANDEM JACKSON NETWORK, SEEN AS A  
QUASI-BIRTH-AND-DEATH PROCESS

D. P. Kroese and  W. R. W. Scheinhardt and P. G. Taylor

Quasi-birth-and-death (QBD) processes with infinite ``phase spaces'' can
exhibit unusual and interesting behavior. One of the simplest examples 
of such
a process is the two-node tandem Jackson network, with the ``phase'' 
giving the
state of the first queue and the ``level'' giving the state of the 
second
queue. In this paper, we undertake an extensive analysis of the 
properties of
this QBD. In particular, we investigate the spectral properties of 
Neuts's
R-matrix and show that the decay rate of the stationary distribution of 
the
``level'' process is not always equal to the convergence norm of R. In 
fact, we
show that we can obtain any decay rate from a certain range by 
controlling only
the transition structure at level zero, which is independent of R. We 
also
consider the sequence of tandem queues that is constructed by 
restricting the
waiting room of the first queue to some finite capacity, and then 
allowing this
capacity to increase to infinity. We show that the decay rates for the 
finite
truncations converge to a value, which is not necessarily the decay 
rate in the
infinite waiting room case. Finally, we show that the probability that 
the
process hits level n before level 0 given that it starts in level 1 
decays at a
rate which is not necessarily the same as the decay rate for the 
stationary
distribution.


http://front.math.ucdavis.edu/math.PR/0503555

---------------------------------------------------------------

3250. NUMBER OF PATHS VERSUS NUMBER OF BASIS FUNCTIONS IN AMERICAN 
OPTION  PRICING

Paul Glasserman and Bin Yu

An American option grants the holder the right to select the time at 
which to
exercise the option, so pricing an American option entails solving an 
optimal
stopping problem. Difficulties in applying standard numerical methods to
complex pricing problems have motivated the development of techniques 
that
combine Monte Carlo simulation with dynamic programming. One class of 
methods
approximates the option value at each time using a linear combination 
of basis
functions, and combines Monte Carlo with backward induction to estimate 
optimal
coefficients in each approximation. We analyze the convergence of such 
a method
as both the number of basis functions and the number of simulated paths
increase. We get explicit results when the basis functions are 
polynomials and
the underlying process is either Brownian motion or geometric Brownian 
motion.
We show that the number of paths required for worst-case convergence 
grows
exponentially in the degree of the approximating polynomials in the 
case of
Brownian motion and faster in the case of geometric Brownian motion.


http://front.math.ucdavis.edu/math.PR/0503556

---------------------------------------------------------------

3251. STOCHASTIC CHARACTERIZATION OF HARMONIC MAPS ON RIEMANNIAN 
POLYHEDRA

M. A. Aprodu and  T. Bouziane

The aim of this paper is to relate the theory of Harmonicity in sense
Korevaar-Schoen and Eells-Fuglede to the notion of a Brownian motion in
riemannian polyhedra achieved by the second author. Firstly, we prove 
that
Brownian motions is stochastically continuous Markov processes and 
consequently
it has a unique infinitesimal generator on some Banach space. Secondly, 
we show
that in some sense, the Brownian motion in Riemannian polyhedra has as 
an
infinitesimal generator the "Laplacian". Finally, we show that harmonic 
maps,
with target smooth Riemannian manifolds, in the sense of Eells-Fuglede, 
are
exactly those which maps Brownian motion in Riemannian polyhedron into a
martingale, while harmonic morphisms are exactly the maps which are 
Brownian
preserving paths


http://front.math.ucdavis.edu/math.PR/0503557

---------------------------------------------------------------

3252. CENTRAL LIMIT THEOREMS FOR RANDOM POLYTOPES IN A SMOOTH CONVEX SET

Van Vu

Let $K$ be a smooth convex set with volume one in $\BBR^d$. Choose $n$ 
random
points in $K$ independently according to the uniform distribution. The 
convex
hull of these points, denoted by $K_n$, is called a {\it random 
polytope}. We
prove that several key functionals of $K_n$ satisfy the central limit 
theorem
as $n$ tends to infinity.


http://front.math.ucdavis.edu/math.PR/0503559

---------------------------------------------------------------

3253. QUENCHED INVARIANCE PRINCIPLE FOR SIMPLE RANDOM WALK ON 
TWO-DIMENSIONAL  PERCOLATION CLUSTERS

Noam Berger and Marek Biskup

We consider the simple random walk on a two-dimensional super-critical
infinite percolation cluster and prove that for almost every 
configuration it
scales to Brownian motion.


http://front.math.ucdavis.edu/math.PR/0503576

---------------------------------------------------------------

3254. ASYMPTOTIC GENEALOGY OF A CRITICAL BRANCHING PROCESS

Lea Popovic

Consider a continuous-time binary branching process conditioned to have
population size n at some time t, and with a chance p for recording each
extinct individual in the process. Within the family tree of this 
process, we
consider the smallest subtree containing the genealogy of the extant
individuals together with the genealogy of the recorded extinct 
individuals. We
introduce a novel representation of such subtrees in terms of a 
point-process,
and provide asymptotic results on the distribution of this 
point-process as the
number of extant individuals increases. We motivate the study within 
the scope
of a coherent analysis for an a priori model for macroevolution.


http://front.math.ucdavis.edu/math.PR/0503577

---------------------------------------------------------------

3255. GENERALIZED STOCHASTIC DIFFERENTIAL UTILITY AND PREFERENCE FOR  
INFORMATION

Ali Lazrak

This paper develops, in a Brownian information setting, an approach for
analyzing the preference for information, a question that motivates the
stochastic differential utility (SDU) due to Duffie and Epstein 
[Econometrica
60 (1992) 353-394]. For a class of backward stochastic differential 
equations
(BSDEs) including the generalized SDU [Lazrak and Quenez Math. Oper. 
Res. 28
(2003) 154-180], we formulate the information neutrality property as an
invariance principle when the filtration is coarser (or finer) and 
characterize
it. We also provide concrete examples of heterogeneity in information 
that
illustrate explicitly the nonneutrality property for some GSDUs. Our 
results
suggest that, within the GSDUs class of intertemporal utilities, risk 
aversion
or ambiguity aversion are inflexibly linked to the preference for 
information.


http://front.math.ucdavis.edu/math.PR/0503579

---------------------------------------------------------------

3256. THE RIGHT TIME TO SELL A STOCK WHOSE PRICE IS DRIVEN BY MARKOVIAN 
NOISE

Robert C. Dalang and M.-O. Hongler

We consider the problem of finding the optimal time to sell a stock, 
subject
to a fixed sales cost and an exponential discounting rate \rho. We 
assume that
the price of the stock fluctuates according to the equation dY_t=Y_t(\mu
dt+\sigma\xi(t) dt), where (\xi(t)) is an alternating Markov renewal 
process
with values in {\pm1}, with an exponential renewal time. We determine 
the
critical value of \rho under which the value function is finite. We 
examine the
validity of the ``principle of smooth fit'' and use this to give a 
complete and
essentially explicit solution to the problem, which exhibits a 
surprisingly
rich structure. The corresponding result when the stock price evolves 
according
to the Black and Scholes model is obtained as a limit case.


http://front.math.ucdavis.edu/math.PR/0503580

---------------------------------------------------------------

3257. CONCENTRATION OF NORMALIZED SUMS AND A CENTRAL LIMIT THEOREM FOR  
NONCORRELATED RANDOM VARIABLES

Sergey G. Bobkov

For noncorrelated random variables, we study a concentration property 
of the
family of distributions of normalized sums formed by sequences of times 
of a
given large length.


http://front.math.ucdavis.edu/math.PR/0503583

---------------------------------------------------------------

3258. ANALYSIS OF A CLASS OF LIKELIHOOD BASED CONTINUOUS TIME 
STOCHASTIC  VOLATILITY MODELS INCLUDING ORNSTEIN-UHLENBECK MODELS IN 
FINANCIAL ECONOMICS

Lancelot F. James

In a series of recent papers Barndorff-Nielsen and Shephard introduce an
attractive class of continuous time stochastic volatility models for 
financial
assets where the volatility processes are functions of positive
Ornstein-Uhlenbeck(OU) processes. This models are known to be 
substantially
more flexible than Gaussian based models. One current problem of this 
approach
is the unavailability of a tractable exact analysis of likelihood based
stochastic volatility models for the returns of log prices of stocks.
   With this point in mind, the likelihood models of Barndorff-Nielsen 
and
Shephard are viewed as members of a much larger class of models. That is
likelihoods based on n conditionally independent Normal random 
variables whose
mean and variance are representable as linear functionals of a common
unobserved Poisson random measure. The analysis of these models is 
facilitated
by applying the methods in James (2005, 2002), in particular an Esscher 
type
transform of Poisson random measures; in conjunction with a special 
case of the
Weber-Sonine formula. It is shown that the marginal likelihood may be 
expressed
in terms of a multidimensional Fourier-cosine transform. This yields 
tractable
forms of the likelihood and also allows a full Bayesian posterior 
analysis of
the integrated volatility process. A general formula for the posterior 
density
of the log price given the observed data is derived, which could 
potentially
have applications to option pricing. We also identify tractable 
subclasses,
where inference can be based on a finite number of independent random
variables. It is shown that inference does not necessarily require 
simulation
of random measures. Rather, classical numerical integration can be used 
in the
most general cases.


http://front.math.ucdavis.edu/math.ST/0503055

---------------------------------------------------------------

3259. MODIFIED LOGARITHMIC SOBOLEV INEQUALITIES IN NULL CURVATURE

Ivan Gentil and  Arnaud Guillin and Laurent Miclo

We present a logarithmic Sobolev inequality adapted to a log-concave 
measure.
Assume that $\Phi$ is a symmetric convex function on $\dR$ satisfying
$(1+\e)\Phi(x)\leq {x}\Phi'(x)\leq(2-\e)\Phi(x)$ for $x\geq0$ large 
enough and
with $\e\in]0,1/2]$. We prove that the probability measure on $\dR$
$\mu_\Phi(dx)=e^{-\Phi(x)}/Z_\Phi dx$ satisfies a modified and adapted
logarithmic Sobolev inequality : there exist three constant $A,B,D>0$ 
such that
for all smooth $f>0$, \begin{equation*}
   \ent{\mu_\Phi}{f^2}\leq A\int 
H_{\Phi}\PAR{{\frac{f'}{f}}}f^2d\mu_\Phi,
\text{with} H_{\Phi}(x)= {\begin{array}{rl} \Phi^*\PAR{Bx} &\text{if
}\ABS{x}\geq D, x^2 &\text{if}\ABS{x}\leq D. \end{array} . 
\end{equation*}


http://front.math.ucdavis.edu/math.PR/0503585

---------------------------------------------------------------

3260. LENSES IN SKEW BROWNIAN FLOW

Krzysztof Burdzy and Haya Kaspi

We consider a stochastic flow in which individual particles follow skew
Brownian motions, with each one of these processes driven by the same 
Brownian
motion. One does not have uniqueness for the solutions of the 
corresponding
stochastic differential equation simultaneously for all real initial
conditions. Due to this lack of the simultaneous strong uniqueness for 
the
whole system of stochastic differential equations, the flow contains 
lenses,
that is, pairs of skew Brownian motions which start at the same point,
bifurcate, and then coalesce in a finite time. The paper contains 
qualitative
and quantitative (distributional) results on the geometry of the flow 
and
lenses.


http://front.math.ucdavis.edu/math.PR/0503586

---------------------------------------------------------------

3261. WEAK POINCARE INEQUALITIES ON DOMAINS DEFINED BY BROWNIAN ROUGH 
PATHS

Shigeki Aida

We prove weak Poincare inequalities on domains which are inverse images 
of
open sets in Wiener spaces under continuous functions of Brownian rough 
paths.
The result is applicable to Dirichlet forms on loop groups and 
connected open
subsets of path spaces over compact Riemannian manifolds.


http://front.math.ucdavis.edu/math.PR/0503587

---------------------------------------------------------------

3262. TIME CHANGES OF SYMMETRIC DIFFUSIONS AND FELLER MEASURES

Masatoshi Fukushima and  Ping He and Jiangang Ying

We extend the classical Douglas integral, which expresses the Dirichlet
integral of a harmonic function on the unit disk in terms of its value 
on
boundary, to the case of conservative symmetric diffusion in terms of 
Feller
measure, by using the approach of time change of Markov processes.


http://front.math.ucdavis.edu/math.PR/0503588

---------------------------------------------------------------

3263. DIFFERENCE PROPHET INEQUALITIES FOR [0,1]-VALUED I.I.D. RANDOM 
VARIABLES  WITH COST FOR OBSERVATIONS

Holger Kosters

Let X_1,X_2,... be a sequence of [0,1]-valued i.i.d. random variables, 
let
c\geq 0 be a sampling cost for each observation and let Y_i=X_i-ic, 
i=1,2,....
For n=1,2,..., let M(Y_1,...,Y_n)=E(max_{1\leq i\leq n}Y_i) and
V(Y_1,...,Y_n)=sup_{\tau \in C^n}E(Y_{\tau}), where C^n denotes the set 
of all
stopping rules for Y_1,...,Y_n. Sharp upper bounds for the difference
M(Y_1,...,Y_n)-V(Y_1,...,Y_n) are given under various restrictions on c 
and n.


http://front.math.ucdavis.edu/math.PR/0503589

---------------------------------------------------------------

3264. UNIQUENESS FOR DIFFUSIONS DEGENERATING AT THE BOUNDARY OF A 
SMOOTH  BOUNDED SET

Dante DeBlassie

For continuous \gamma, g:[0,1]\to(0,\infty), consider the degenerate
stochastic differential equation dX_t=[1-|X_t|^2]^{1/2}\gamma(|X_t|)
dB_t-g(|X_t|)X_t dt in the closed unit ball of R^n. We introduce a new 
idea to
show pathwise uniqueness holds when \gamma and g are Lipschitz and
\frac{g(1)}{\gamma^2(1)}>\sqrt2-1. When specialized to a case studied 
by Swart
[Stochastic Process. Appl. 98 (2002) 131-149] with \gamma=\sqrt2 and 
g\equiv c,
this gives an improvement of his result. Our method applies to more 
general
contexts as well. Let D be a bounded open set with C^3 boundary and 
suppose
h:\barD\to R Lipschitz on \barD, as well as C^2 on a neighborhood of 
\partial D
with Lipschitz second partials there. Also assume h>0 on D, h=0 on 
\partial D
and |\nabla h|>0 on \partial D. An example of such a function is
h(x)=d(x,\partial D). We give conditions which ensure pathwise 
uniqueness holds
for dX_t=h(X_t)^{1/2}\sigma(X_t) dB_t+b(X_t) dt in \barD.


http://front.math.ucdavis.edu/math.PR/0503590

---------------------------------------------------------------

3265. MODERATE DEVIATIONS FOR DIFFUSIONS WITH BROWNIAN POTENTIALS

Yueyun Hu and Zhan Shi

We present precise moderate deviation probabilities, in both quenched 
and
annealed settings, for a recurrent diffusion process with a Brownian 
potential.
Our method relies on fine tools in stochastic calculus, including 
Kotani's
lemma and Lamperti's representation for exponential functionals. In 
particular,
our result for quenched moderate deviations is in agreement with a 
recent
theorem of Comets and Popov [Probab. Theory Related Fields 126 (2003) 
571-609]
who studied the corresponding problem for Sinai's random walk in random
environment.


http://front.math.ucdavis.edu/math.PR/0503591

---------------------------------------------------------------

3266. SELF-INTERSECTION LOCAL TIME: CRITICAL EXPONENT, LARGE 
DEVIATIONS, AND  LAWS OF THE ITERATED LOGARITHM

Richard F. Bass and Xia Chen

If \beta_t is renormalized self-intersection local time for planar 
Brownian
motion, we characterize when Ee^{\gamma\beta_1} is finite or infinite 
in terms
of the best constant of a Gagliardo-Nirenberg inequality. We prove large
deviation estimates for \beta_1 and -\beta_1. We establish lim sup and 
lim inf
laws of the iterated logarithm for \beta_t as t\to\infty.


http://front.math.ucdavis.edu/math.PR/0503592

---------------------------------------------------------------

3267. EXPONENTIAL ASYMPTOTICS AND LAW OF THE ITERATED LOGARITHM FOR  
INTERSECTION LOCAL TIMES OF RANDOM WALKS

Xia Chen

Let \alpha ([0,1]^p) denote the intersection local time of p independent
d-dimensional Brownian motions running up to the time 1. Under the 
conditions
p(d-2)<d and d\ge 2, we prove lim_{t\to\infty}t^{-1}\log
P\bigl{\alpha([0,1]^p)\ge t^{(d(p-1))/2}\bigr}=-\gamma_{\alpha}(d,p) 
with the
right-hand side being identified in terms of the the best constant of 
the
Gagliardo-Nirenberg inequality. Within the scale of moderate 
deviations, we
also establish the precise tail asymptotics for the intersection local 
time
I_n=#{(k_1,...,k_p)\in [1,n]^p;S_1(k_1)=... =S_p(k_p)} run by the 
independent,
symmetric, Z^d-valued random walks S_1(n),...,S_p(n). Our results apply 
to the
law of the iterated logarithm. Our approach is based on Feynman-Kac 
type large
deviation, time exponentiation, moment computation and some 
technologies along
the lines of probability in Banach space. As an interesting coproduct, 
we
obtain the inequality \bigl(EI_{n_1+... +n_a}^m\bigr)^{1/p}\le 
\sum_{k_1+...
+k_a=m\limits_{k_1,...,k_a\ge 0}}\frac{m!}{k_1!...
k_a!}\bigl(EI_{n_1}^{k_1}\bigr)^{1/p}... 
\bigl(EI_{n_a}^{k_a}\bigr)^{1/p} in
the case of random walks.


http://front.math.ucdavis.edu/math.PR/0503593

---------------------------------------------------------------

3268. REGULARITY OF SOLUTIONS TO STOCHASTIC VOLTERRA EQUATIONS WITH 
INFINITE  DELAY

Anna Karczewska and  Carlos Lizama

The paper gives necessary and sufficient conditions providing 
regularity of
solutions to stochastic Volterra equations with infinite delay on a
$d$-dimensional torus. The harmonic analysis techniques and stochastic
integration in function spaces are used.


http://front.math.ucdavis.edu/math.PR/0503595

---------------------------------------------------------------

3269. A CLASS OF GENERALIZED HYPERBOLIC CONTINUOUS TIME INTEGRATED 
STOCHASTIC  VOLATILITY LIKELIHOOD MODELS

Lancelot F. James and John W. Lau

This paper discusses and analyzes a class of likelihood models which are
based on two distributional innovations in financial models for stock 
returns.
That is, the notion that the marginal distribution of aggregate returns 
of
log-stock prices are well approximated by generalized hyperbolic 
distributions,
and that volatility clustering can be handled by specifying the 
integrated
volatility as a random process such as that proposed in a recent series 
of
papers by Barndorff-Nielsen and Shephard (BNS). The BNS models produce
likelihoods for aggregate returns which can be viewed as a subclass of 
latent
regression models where one has n conditionally independent Normal 
random
variables whose mean and variance are representable as linear 
functionals of a
common unobserved Poisson random measure. James (2005b) recently 
obtains an
exact analysis for such models yielding expressions of the likelihood 
in terms
of quite tractable Fourier-Cosine integrals. Here, our idea is to 
analyze a
class of likelihoods, which can be used for similar purposes, but where 
the
latent regression models are based on n conditionally independent 
models with
distributions belonging to a subclass of the generalized hyperbolic
distributions and whose corresponding parameters are representable as 
linear
functionals of a common unobserved Poisson random measure. Our models 
are
perhaps most closely related to the Normal inverse 
Gaussian/GARCH/A-PARCH
models of Brandorff-Nielsen (1997) and Jensen and Lunde (2001), where 
in our
case the GARCH component is replaced by quantities such as INT-OU 
processes. It
is seen that, importantly, such likelihood models exhibit quite 
different
features structurally. One nice feature of the model is that it allows 
for more
flexibility in terms of modelling of external regression parameters.


http://front.math.ucdavis.edu/math.ST/0503056

---------------------------------------------------------------

3270. A LOCAL LIMIT THEOREM FOR DIRECTED POLYMERS IN RANDOM MEDIA: THE  
CONTINUOUS AND THE DISCRETE CASE

Vincent Vargas (PMA)

In this article, we consider two models of directed polymers in random
environment: a discrete model and a continuous model. We consider these 
models
in dimension greater or equal to 3 and we suppose that the normalized 
partition
function is bounded in L^2. Under these assumptions, Sinai proved a 
local limit
theorem for the discrete model, using a perturbation expansion. In this
article, we give a new method for proving Sinai's local limit theorem. 
This new
method can be transposed to the continuous setting in which we prove a 
similar
local limit theorem.


http://front.math.ucdavis.edu/math.PR/0503596

---------------------------------------------------------------

3271. GLOBAL L_2-SOLUTIONS OF STOCHASTIC NAVIER-STOKES EQUATIONS

R. Mikulevicius and B. L. Rozovskii

This paper concerns the Cauchy problem in R^d for the stochastic
Navier-Stokes equation \partial_tu=\Delta u-(u,\nabla)u-\nabla p+f(u)+
[(\sigma,\nabla)u-\nabla \tilde p+g(u)]\circ \dot W, u(0)=u_0,\qquad 
divu=0,
driven by white noise \dot W. Under minimal assumptions on regularity 
of the
coefficients and random forces, the existence of a global weak 
(martingale)
solution of the stochastic Navier-Stokes equation is proved. In the
two-dimensional case, the existence and pathwise uniqueness of a global 
strong
solution is shown. A Wiener chaos-based criterion for the existence and
uniqueness of a strong global solution of the Navier-Stokes equations is
established.


http://front.math.ucdavis.edu/math.PR/0503597

---------------------------------------------------------------

3272. CENTRAL LIMIT THEOREMS FOR SEQUENCES OF MULTIPLE STOCHASTIC 
INTEGRALS

David Nualart and Giovanni Peccati

We characterize the convergence in distribution to a standard normal 
law for
a sequence of multiple stochastic integrals of a fixed order with 
variance
converging to 1. Some applications are given, in particular to study the
limiting behavior of quadratic functionals of Gaussian processes.


http://front.math.ucdavis.edu/math.PR/0503598

---------------------------------------------------------------

3273. STOCHASTIC INTEGRAL REPRESENTATION AND REGULARITY OF THE DENSITY 
FOR THE  EXIT MEASURE OF SUPER-BROWNIAN MOTION

Jean-Francois Le Gall and Leonid Mytnik

This paper studies the regularity properties of the density of the exit
measure for super-Brownian motion with (1+\beta)-stable branching 
mechanism. It
establishes the continuity of the density in dimension d=2 and the
unboundedness of the density in all other dimensions where the density 
exists.
An alternative description of the exit measure and its density is also 
given
via a stochastic integral representation. Results are applied to the
probabilistic representation of nonnegative solutions of the partial
differential equation \Delta u=u^{1+\beta}.


http://front.math.ucdavis.edu/math.PR/0503599

---------------------------------------------------------------

3274. PRECISE ASYMPTOTICS OF SMALL EIGENVALUES OF REVERSIBLE DIFFUSIONS 
IN THE  METASTABLE REGIME

Michael Eckhoff

We investigate the close connection between metastability of the 
reversible
diffusion process X defined by the stochastic differential equation
dX_t=-\nabla F(X_t) dt+\sqrt2\epsilon dW_t,\qquad \epsilon >0, and the 
spectrum
near zero of its generator -L_{\epsilon}\equiv \epsilon \Delta -\nabla
F\cdot\nabla, where F:R^d\to R and W denotes Brownian motion on R^d. For
generic F to each local minimum of F there corresponds a metastable 
state. We
prove that the distribution of its rescaled relaxation time converges 
to the
exponential distribution as \epsilon \downarrow 0 with optimal and 
uniform
error estimates. Each metastable state can be viewed as an eigenstate of
L_{\epsilon} with eigenvalue which converges to zero exponentially fast 
in
1/\epsilon. Modulo errors of exponentially small order in 1/\epsilon 
this
eigenvalue is given as the inverse of the expected metastable 
relaxation time.
The eigenstate is highly concentrated in the basin of attraction of the
corresponding trap.


http://front.math.ucdavis.edu/math.PR/0503600

---------------------------------------------------------------

3275. ASYMPTOTIC EXPANSIONS FOR THE LAPLACE APPROXIMATIONS OF SUMS OF 
BANACH  SPACE-VALUED RANDOM VARIABLES

Sergio Albeverio and Song Liang

Let X_i, i\in N, be i.i.d. B-valued random variables, where B is a real
separable Banach space. Let \Phi be a smooth enough mapping from B into 
R. An
asymptotic evaluation of Z_n=E(\exp (n\Phi (\sum_{i=1}^nX_i/n))), up to 
a
factor (1+o(1)), has been gotten in Bolthausen [Probab. Theory Related 
Fields
72 (1986) 305-318] and Kusuoka and Liang [Probab. Theory Related Fields 
116
(2000) 221-238]. In this paper, a detailed asymptotic expansion of Z_n 
as n\to
\infty is given, valid to all orders, and with control on remainders. 
The
results are new even in finite dimensions.


http://front.math.ucdavis.edu/math.PR/0503601

---------------------------------------------------------------

3276. MULTIPLICATIVE MONOTONE CONVOLUTIONS

Uwe Franz

Recently, Bercovici has introduced multiplicative convolutions based on
Muraki's monotone independence and shown that these convolution of 
probability
measures correspond to the composition of some function of their Cauchy
transforms. We provide a new proof of this fact based on the 
combinatorics of
moments. We also give a new characterisation of the probability 
measures that
can be embedded into continuous monotone convolution semigroups of 
probability
measures on the unit circle and briefly discuss a relation to 
Galton-Watson
processes.


http://front.math.ucdavis.edu/math.PR/0503602

---------------------------------------------------------------

3277. EXTREMES ON TREES

Tailen Hsing and Holger Rootzen

This paper considers the asymptotic distribution of the longest edge of 
the
minimal spanning tree and nearest neighbor graph on X_1,...,X_{N_n} 
where
X_1,X_2,... are i.i.d. in \Re^2 with distribution F and N_n is 
independent of
the X_i and satisfies N_n/n\to_p1. A new approach based on spatial 
blocking and
a locally orthogonal coordinate system is developed to treat cases for 
which F
has unbounded support. The general results are applied to a number of 
special
cases, including elliptically contoured distributions, distributions 
with
independent Weibull-like margins and distributions with parallel level 
curves.


http://front.math.ucdavis.edu/math.PR/0503603

---------------------------------------------------------------

3278. ON THE MONOTONICITY OF THE SPEED OF RANDOM WALKS ON A PERCOLATION 
  CLUSTER OF TREES

Dayue Chen and Fuxi Zhang

We consider the simple random walk on the infinite cluster of the 
Bernoulli
bond percolation of trees, and investigate the relation between the 
speed of
the simple random walk and the retaining probability $p$ by studying 
three
classes of trees. A sufficient condition is established for 
Galton-Watson
trees.


http://front.math.ucdavis.edu/math.PR/0503610

---------------------------------------------------------------

3279. CONTRACTIVE MARKOV SYSTEMS II

Ivan Werner

In this paper, we continue development of the theory of contractive 
Markov
systems (CMSs) initiated in \cite{Wer1}. We extend some results from
\cite{Wer1}, \cite{Wer3}, \cite{Wer5} and \cite{Wer6} to the case of
contractive Markov systems with probabilities which have a square 
summable
variation by using some ideas of A. Johansson and A. Oeberg \cite{JO}. 
In
particular, we show that an irreducible CMS has a unique invariant Borel
probability measure if the vertex sets form an open partition of the 
state
space and the restrictions of the probability functions on their vertex 
sets
have a square summable variation and are bounded away from zero.


http://front.math.ucdavis.edu/math.PR/0503633

---------------------------------------------------------------

3280. LIMIT THEOREMS FOR ITERATED RANDOM TOPICAL OPERATORS

Glenn Merlet (IRMAR)

Let A(n) be a sequence of i.i.d. topical (i.e. isotone and additively
homogeneous) operators. Let $x(n,x\_0)$ be defined by $x(0,x\_0)=x\_0$ 
and
$x(n,x\_0)=A(n)x(n-1,x\_0)$. This can modelize a wide range of systems
including, task graphs, train networks, Job-Shop, timed digital 
circuits or
parallel processing systems. When A(n) has the memory loss property, we 
use the
spectral gap method to prove limit theorems for $x(n,x\_0)$. Roughly 
speaking,
we show that $x(n,x\_0)$ behaves like a sum of i.i.d. real variables.
Precisely, we show that with suitable additional conditions, it 
satisfies a
central limit theorem with rate, a local limit theorem, a renewal 
theorem and a
large deviations principle, and we give an algebraic condition to 
ensure the
positivity of the variance in the CLT. When A(n) are defined by 
matrices in the
\mp semi-ring, we give more effective statements and show that the 
additional
conditions and the positivity of the variance in the CLT are generic.


http://front.math.ucdavis.edu/math.PR/0503634

---------------------------------------------------------------

3281. A PROBABILISTIC APPROACH TO THE GEOMETRY OF THE \ELL_P^N-BALL

Franck Barthe and  Olivier Guedon and  Shahar Mendelson and Assaf Naor

This article investigates, by probabilistic methods, various geometric
questions on B_p^n, the unit ball of \ell_p^n. We propose realizations 
in terms
of independent random variables of several distributions on B_p^n, 
including
the normalized volume measure. These representations allow us to unify 
and
extend the known results of the sub-independence of coordinate slabs in 
B_p^n.
As another application, we compute moments of linear functionals on 
B_p^n,
which gives sharp constants in Khinchine's inequalities on B_p^n and 
determines
the \psi_2-constant of all directions on B_p^n. We also study the 
extremal
values of several Gaussian averages on sections of B_p^n (including 
mean width
and \ell-norm), and derive several monotonicity results as p varies.
Applications to balancing vectors in \ell_2 and to covering numbers of
polyhedra complete the exposition.


http://front.math.ucdavis.edu/math.PR/0503650

---------------------------------------------------------------

3282. MOMENT INEQUALITIES FOR FUNCTIONS OF INDEPENDENT RANDOM VARIABLES

Stephane Boucheron and  Olivier Bousquet and  Gabor Lugosi and Pascal 
Massart

A general method for obtaining moment inequalities for functions of
independent random variables is presented. It is a generalization of the
entropy method which has been used to derive concentration inequalities 
for
such functions [Boucheron, Lugosi and Massart Ann. Probab. 31 (2003)
1583-1614], and is based on a generalized tensorization inequality due 
to
Latala and Oleszkiewicz [Lecture Notes in Math. 1745 (2000) 147-168]. 
The new
inequalities prove to be a versatile tool in a wide range of 
applications. We
illustrate the power of the method by showing how it can be used to
effortlessly re-derive classical inequalities including Rosenthal and
Kahane-Khinchine-type inequalities for sums of independent random 
variables,
moment inequalities for suprema of empirical processes and moment 
inequalities
for Rademacher chaos and U-statistics. Some of these corollaries are 
apparently
new. In particular, we generalize Talagrand's exponential inequality for
Rademacher chaos of order 2 to any order. We also discuss applications 
for
other complex functions of independent random variables, such as 
suprema of
Boolean polynomials which include, as special cases, subgraph counting 
problems
in random graphs.


http://front.math.ucdavis.edu/math.PR/0503651

---------------------------------------------------------------

3283. ON THE STOCHASTIC CALCULUS METHOD FOR SPINS SYSTEMS

Samy Tindel

In this note we show how to generalize the stochastic calculus method
introduced by Comets and Neveu [Comm. Math. Phys. 166 (1995) 549-564] 
for two
models of spin glasses, namely, the SK model with external field and the
perceptron model. This method allows to derive quite easily some 
fluctuation
results for the free energy in those two cases.


http://front.math.ucdavis.edu/math.PR/0503652

---------------------------------------------------------------

3284. CLOSURES OF EXPONENTIAL FAMILIES

Imre Csiszar and Frantisek Matus

The variation distance closure of an exponential family with a convex 
set of
canonical parameters is described, assuming no regularity conditions. 
The tools
are the concepts of convex core of a measure and extension of an 
exponential
family, introduced previously by the authors, and a new concept of 
accessible
faces of a convex set. Two other closures related to the information 
divergence
are also characterized.


http://front.math.ucdavis.edu/math.PR/0503653

---------------------------------------------------------------

3285. ONE-DEPENDENT TRIGONOMETRIC DETERMINANTAL PROCESSES ARE  
TWO-BLOCK-FACTORS

Erik I. Broman

Given a trigonometric polynomial f:[0,1]\to[0,1] of degree m, one can 
define
a corresponding stationary process {X_i}_{i\in Z} via determinants of 
the
Toeplitz matrix for f. We show that for m=1 this process, which is 
trivially
one-dependent, is a two-block-factor.


http://front.math.ucdavis.edu/math.PR/0503654

---------------------------------------------------------------

3286. ASYMPTOTICS FOR HITTING TIMES

M. Kupsa and Y. Lacroix

In this paper we characterize possible asymptotics for hitting times in
aperiodic ergodic dynamical systems: asymptotics are proved to be the
distribution functions of subprobability measures on the line belonging 
to the
functional class {6pt} {-3mm}(A){6mm}F={F:R\to [0,1]:\left\lbrack 
\matrixF is
increasing, null on ]-\infty, 0]; \noalignF is continuous and concave;
\noalignF(t)\le t for t\ge 0.\right.}. {6pt} Note that all possible 
asymptotics
are absolutely continuous.


http://front.math.ucdavis.edu/math.PR/0503655

---------------------------------------------------------------

3287. KREIN'S SPECTRAL THEORY AND THE PALEY-WIENER EXPANSION FOR 
FRACTIONAL  BROWNIAN MOTION

Kacha Dzhaparidze and Harry van Zanten

In this paper we develop the spectral theory of the fractional Brownian
motion (fBm) using the ideas of Krein's work on continuous analogous of
orthogonal polynomials on the unit circle. We exhibit the functions 
which are
orthogonal with respect to the spectral measure of the fBm and obtain an
explicit reproducing kernel in the frequency domain. We use these 
results to
derive an extension of the classical Paley-Wiener expansion of the 
ordinary
Brownian motion to the fractional case.


http://front.math.ucdavis.edu/math.PR/0503656

---------------------------------------------------------------

3288. CRITICALITY FOR BRANCHING PROCESSES IN RANDOM ENVIRONMENT

V. I. Afanasyev and  J. Geiger and  G. Kersting and V. A. Vatutin

We study branching processes in an i.i.d. random environment, where the
associated random walk is of the oscillating type. This class of 
processes
generalizes the classical notion of criticality. The main properties of 
such
branching processes are developed under a general assumption, known as
Spitzer's condition in fluctuation theory of random walks, and some 
additional
moment condition. We determine the exact asymptotic behavior of the 
survival
probability and prove conditional functional limit theorems for the 
generation
size process and the associated random walk. The results rely on a 
stimulating
interplay between branching process theory and fluctuation theory of 
random
walks.


http://front.math.ucdavis.edu/math.PR/0503657

---------------------------------------------------------------

3289. EXAMPLES OF MODERATE DEVIATION PRINCIPLE FOR DIFFUSION PROCESSES

A. Guillin} and  R. Liptser

Taking into account some likeness of moderate deviations (MD) and 
central
limit theorems (CLT), we develop an approach, which made a good showing 
in CLT,
for MD analysis of a family $$ 
S^\kappa_t=\frac{1}{t^\kappa}\int_0^tH(X_s)ds, \
t\to\infty $$ for an ergodic diffusion process $X_t$ under 
$0.5<\kappa<1$ and
appropriate $H$. We mean a decomposition with ``corrector'': $$
\frac{1}{t^\kappa}\int_0^tH(X_s)ds={\rm
corrector}+\frac{1}{t^\kappa}\underbrace{M_t}_{\rm martingale}. $$ and 
show
that, as in the CLT analysis, the corrector is negligible but in the MD 
scale,
and the main contribution in the MD brings the family ``$
\frac{1}{t^\kappa}M_t, t\to\infty. $'' Starting from Bayer and Freidlin,
\cite{BF}, and finishing by Wu's papers \cite{Wu1}-\cite{WuH}, in the 
MD study
Laplace's transform dominates. In the paper, we replace the Laplace 
technique
by one, admitting to give the conditions, providing the MD, in terms of
``drift-diffusion'' parameters and $H$. However, a verification of these
conditions heavily depends on a specificity of a diffusion model. That 
is why
the paper is named ``Examples ...''.


http://front.math.ucdavis.edu/math.PR/0503070

---------------------------------------------------------------

3290. CONFIDENCE INTERVALS FOR NONHOMOGENEOUS BRANCHING PROCESSES AND  
POLYMERASE CHAIN REACTIONS

Didier Piau

We extend in two directions our previous results about the sampling and 
the
empirical measures of immortal branching Markov processes. Direct 
applications
to molecular biology are rigorous estimates of the mutation rates of 
polymerase
chain reactions from uniform samples of the population after the 
reaction.
First, we consider nonhomogeneous processes, which are more adapted to 
real
reactions. Second, recalling that the first moment estimator is 
analytically
known only in the infinite population limit, we provide rigorous 
confidence
intervals for this estimator that are valid for any finite population. 
Our
bounds are explicit, nonasymptotic and valid for a wide class of 
nonhomogeneous
branching Markov processes that we describe in detail. In the setting of
polymerase chain reactions, our results imply that enlarging the size 
of the
sample becomes useless for surprisingly small sizes. Establishing 
confidence
intervals requires precise estimates of the second moment of random 
samples.
The proof of these estimates is more involved than the proofs that 
allowed us,
in a previous paper, to deal with the first moment. On the other hand, 
our
method uses various, seemingly new, monotonicity properties of the 
harmonic
moments of sums of exchangeable random variables.


http://front.math.ucdavis.edu/math.PR/0503659

---------------------------------------------------------------

3291. SECTORIAL CONVERGENCE OF U-STATISTICS

Anda Gadidov

In this note we show that almost sure convergence to zero of symmetrized
U-statistics indexed by a linear sector in Z^d_+ is equivalent to 
convergence
along the diagonal of Z^d_+, as it is considered in Lata\la and Zinn 
[Ann.
Probab. 28 (2000) 1908-1924]. Comparisons with similar results for sums 
of
multi-indexed i.i.d. random variables are also made.


http://front.math.ucdavis.edu/math.PR/0503660

---------------------------------------------------------------

3292. A STRONG INVARIANCE PRINCIPLE FOR ASSOCIATED RANDOM FIELDS

Raluca M. Balan

In this paper we generalize Yu's [Ann. Probab. 24 (1996) 2079-2097] 
strong
invariance principle for associated sequences to the multi-parameter 
case,
under the assumption that the covariance coefficient u(n) decays 
exponentially
as n\to \infty. The main tools that we use are the following: the 
Berkes and
Morrow [Z. Wahrsch. Verw. Gebiete 57 (1981) 15-37] multi-parameter 
blocking
technique, the Csorgo and Revesz [Z. Wahrsch. Verw. Gebiete 31 (1975) 
255-260]
quantile transform method and the Bulinski [Theory Probab. Appl. 40 
(1995)
136-144] rate of convergence in the CLT.


http://front.math.ucdavis.edu/math.PR/0503661

---------------------------------------------------------------

3293. MODERATE DEVIATION PRINCIPLE FOR ERGODIC MARKOV CHAIN. LIPSCHITZ  
SUMMANDS

B. Delyon and  A. Juditsky and  R. Liptser

For ${1/2}<\alpha<1$, we propose the MDP analysis for family $$
S^\alpha_n=\frac{1}{n^\alpha}\sum_{i=1}^nH(X_{i-1}), n\ge 1, $$ where
$(X_n)_{n\ge 0}$ be a homogeneous ergodic Markov chain, $X_n\in 
\mathbb{R}^d$,
when the spectrum of operator $P_x$ is continuous. The vector-valued 
function
$H$ is not assumed to be bounded but the Lipschitz continuity of $H$ is
required. The main helpful tools in our approach are Poisson's equation 
and
Stochastic Exponential; the first enables to replace the original 
family by
$\frac{1}{n^\alpha}M_n$ with a martingale $M_n$ while the second to 
avoid the
direct Laplace transform analysis.


http://front.math.ucdavis.edu/math.PR/0503071

---------------------------------------------------------------

3294. DISTANCES IN RANDOM GRAPHS WITH FINITE MEAN AND INFINITE VARIANCE 
  DEGREES

Remco van der Hofstad and  Gerard Hooghiemstra and  Dmitri Znamenski

In this paper we study random graphs with independent and identically
distributed degrees of which the tail of the distribution function is 
regularly
varying with exponent $\tau\in (2,3)$.
   The number of edges between two arbitrary nodes, also called the graph
distance or hopcount, in a graph with $N$ nodes is investigated when 
$N\to
\infty$. When $\tau\in (2,3)$, this graph distance grows like 
$2\frac{\log\log
N}{|\log(\tau-2)|}$. In different papers, the cases $\tau>3$ and 
$\tau\in
(1,2)$ have been studied. We also study the fluctuations around these
asymptotic means, and describe their distributions. The results 
presented here
improve upon results of Reittu and Norros, who prove an upper bound 
only.


http://front.math.ucdavis.edu/math.PR/0502581

---------------------------------------------------------------

3295. ON TAIL DISTRIBUTIONS OF SUPREMUM AND QUADRATIC VARIATION OF 
LOCAL  MARTINGALES

R. Liptser and  A. Novikov

We extend some known results relating the distribution tails of a 
continuous
local martingale supremum and its quadratic variation to the case of 
locally
square integrable martingales with bounded jumps. The predictable and 
optional
quadratic variations are involved in the main result.


http://front.math.ucdavis.edu/math.PR/0503072

---------------------------------------------------------------

3296. LIMIT THEOREMS FOR BIPOWER VARIATION IN FINANCIAL ECONOMETRICS

Ole E. Barndorff-Nielsen (DEPT Math Sci) and  Svend E. Graversen (DEPT  
Math Sci), Jean Jacod (PMA), Neil Shephard (NUFFIELD College)

In this paper we provide an asymptotic analysis of generalised bipower
measures of the variation of price processes in financial economics. 
These
measures encompass the usual quadratic variation, power variation and 
bipower
variations which have been highlighted in recent years in financial
econometrics. The analysis is carried out under some rather general 
Brownian
semimartingale assumptions, which allow for standard leverage effects.


http://front.math.ucdavis.edu/math.PR/0503711

---------------------------------------------------------------

3297. RANDOM WALKS IN A DIRICHLET ENVIRONMENT

Nathana\"el Enriquez and  Christophe Sabot

This paper states a law of large numbers for a random walk in a random 
iid
environment on ${\mathbb Z}^d$, where the environment follows some 
Dirichlet
distribution. Moreover, we give explicit bounds for the asymptotic 
velocity of
the process and also an asymptotic expansion of this velocity at low 
disorder.


http://front.math.ucdavis.edu/math.PR/0503713

---------------------------------------------------------------

3298. RANDOM WALKS IN A RANDOM ENVIRONMENT

S R S Varadhan

Random walks as well as diffusions in random media are considered. 
Methods
are developed that allow one to establish large deviation results for 
both the
`quenched' and the `averaged' case.


http://front.math.ucdavis.edu/math.PR/0503089

---------------------------------------------------------------

3299. RANDOM TREES AND GENERAL BRANCHING PROCESSES

Anna Rudas and  Balint Toth and  Benedek Valko

We consider a model of random tree growth, where at each time unit a new
vertex is added and attached to an already existing vertex chosen at 
random.
The probability with which a vertex with degree $k$ is chosen is 
proportional
to $w(k)$, where the weight function $w$ is the parameter of the model.
   In the papers of B. Bollobas, O. Riordan, J. Spencer, G. Tusnady, and,
independently, Mori, the asymptotic degree distribution is obtained for 
a model
that is equivalent to the special case of ours, when the weight 
function is
linear. The proof therein strongly relies on the linear choice of $w$.
   We give the asymptotical degree distribution for a wide range of 
weight
functions. Moreover, we provide the asymptotic distribution of the tree 
itself
as seen from a randomly selected vertex. The latter approach is new and 
gives
full insight to the limiting structure of the tree.
   Our proof relies on the fact that considering the evolution of the 
random
tree in continuous time, the process may be viewed as a general 
branching
process, this way classical results can be applied.


http://front.math.ucdavis.edu/math.PR/0503728

---------------------------------------------------------------

3300. MIXED POISSON APPROXIMATION OF NODE DEPTH DISTRIBUTIONS IN RANDOM 
BINARY  SEARCH TREES

Rudolf Grubel and Nikolce Stefanoski

We investigate the distribution of the depth of a node containing a 
specific
key or, equivalently, the number of steps needed to retrieve an item 
stored in
a randomly grown binary search tree. Using a representation in terms of 
mixed
and compounded standard distributions, we derive approximations by 
Poisson and
mixed Poisson distributions; these lead to asymptotic normality 
results. We are
particularly interested in the influence of the key value on the 
distribution
of the node depth. Methodologically our message is that the explicit
representation may provide additional insight if compared to the 
standard
approach that is based on the recursive structure of the trees. 
Further, in
order to exhibit the influence of the key on the distributional 
asymptotics, a
suitable choice of distance of probability distributions is important. 
Our
results are also applicable in connection with the number of recursions 
needed
in Hoare's [Comm. ACM 4 (1961) 321-322] selection algorithm Find.


http://front.math.ucdavis.edu/math.PR/0503738

---------------------------------------------------------------

3301. ON FRACTIONAL TEMPERED STABLE MOTION

C. Houdr\'e and  R. Kawai

Fractional tempered stable motion (fTSm)} is defined and studied. FTSm 
has
the same covariance structure as fractional Brownian motion, while 
having tails
heavier than Gaussian but lighter than stable. Moreover, in short time 
it is
close to fractional stable L\'evy motion, while it is approximately 
fractional
Brownian motion in long time. A series representation of fTSm is 
derived and
used for simulation and to study some of its sample path properties.


http://front.math.ucdavis.edu/math.PR/0503741

---------------------------------------------------------------

3302. ON LAYERED STABLE PROCESSES

C. Houdr\'e and  R. Kawai

Layered stable (multivariate) distributions and processes are defined 
and
studied. A layered stable process combines stable trends of two 
different
indices, one of them possibly Gaussian. More precisely, in short time, 
it is
close to a stable process while, in long time, it approximates another 
stable
(possibly Gaussian) process. We also investigate the absolute 
continuity of a
layered stable process with respect to its short time limiting stable 
process.
A series representation of layered stable processes is derived, giving 
insights
into both the structure of the sample paths and of the short and long 
time
behaviors. This series is further used for sample paths simulation.


http://front.math.ucdavis.edu/math.PR/0503742

---------------------------------------------------------------

3303. MEASURE FREE MARTINGALES

Rajeeva L Karandikar and M G Nadkarni

We give a necessary and sufficient condition on a sequence of functions 
on a
set $\Omega$ under which there is a measure on $\Omega$ which renders 
the given
sequence of functions a martingale. Further such a measure is unique if 
we
impose a natural maximum entropy condition on the conditional 
probabilities.


http://front.math.ucdavis.edu/math.PR/0503099

---------------------------------------------------------------

3304. METRIC STABILITY FOR RANDOM WALKS (WITH APPLICATIONS IN 
RENORMALIZATION  THEORY)

Carlos G. Moreira (IMPA-Brazil) Daniel Smania (ICMC-USP-Brazil)

Consider deterministic random walks F: I x Z -> I x Z, defined by
F(x,n)=(f(x), K(x)+n), where f is an expanding Markov map on the 
interval I and
K: I->Z. We study the universality (stability) of ergodic (for instance,
recurrence and transience), geometric and multifractal properties in 
the class
of perturbations of the type G(x,n)=(f_n(x), L(x,n)+n) which are 
topologically
conjugate with F and f_n are expanding maps exponentially close to f 
when |n|
goes to infinity. We give applications of these results in the study of 
the
regularity of conjugacies between (generalized) infinitely 
renormalizable maps
of the interval and the existence of wild attractors for 
one-dimensional maps.


http://front.math.ucdavis.edu/math.DS/0503736

---------------------------------------------------------------

3305. THE JAMMED PHASE OF THE BIHAM-MIDDLETON-LEVINE TRAFFIC MODEL

Omer Angel and  Alexander E Holroyd and James B Martin

Initially a car is placed with probability p at each site of the
two-dimensional integer lattice. Each car is equally likely to be 
East-facing
or North-facing, and different sites receive independent assignments. 
At odd
time steps, each North-facing car moves one unit North if there is a 
vacant
site for it to move into. At even time steps, East-facing cars move 
East in the
same way. We prove that when p is sufficiently close to 1 traffic is 
jammed, in
the sense that no car moves infinitely many times. The result extends to
several variant settings, including a model with cars moving at random 
times,
and higher dimensions.


http://front.math.ucdavis.edu/math.PR/0504001

---------------------------------------------------------------

3306. BSDE WITH QUADRATIC GROWTH AND UNBOUNDED TERMINAL VALUE

Philippe Briand (IRMAR) and  Ying Hu (IRMAR)

In this paper, we study the existence of solution to BSDE with quadratic
growth and unbounded terminal value. We apply a localization procedure 
together
with a priori bounds. As a byproduct, we apply the same method to 
extend a
result on BSDEs with integrable terminal condition.


http://front.math.ucdavis.edu/math.PR/0504002

---------------------------------------------------------------

3307. THE HEAT EQUATION WITH MULTIPLICATIVE STABLE L\'EVY NOISE

Carl Mueller and Leonid Mytnik and Aurel Stan

We study the heat equation with a random potential term. The potential 
is a
one-sided stable noise, with positive jumps, which does not depend on 
time. To
avoid singularities, we define the equation in terms of a construction 
similar
to the Skorokhod integral or Wick product. We give a criterion for 
existence
based on the dimension of the space variable, and the parameter p of 
the stable
noise. Our arguments are different for p<1 and p>1.


http://front.math.ucdavis.edu/math.PR/0504027

---------------------------------------------------------------

3308. THE FULL SCALING LIMIT OF TWO-DIMENSIONAL CRITICAL PERCOLATION

Federico Camia and  Charles M. Newman

We use SLE(6) paths to construct a process of continuum nonsimple loops 
in
the plane and prove that this process coincides with the full continuum 
scaling
limit of 2D critical site percolation on the triangular lattice -- that 
is, the
scaling limit of the set of all interfaces between different clusters. 
Some
properties of the loop process, including conformal invariance, are also
proved. In the main body of the paper these results are proved while 
assuming,
as argued by Schramm and Smirnov, that the percolation exploration path
converges in distribution to the trace of chordal SLE(6). Then, in a 
lengthy
appendix, a detailed proof is provided for this convergence to SLE(6), 
which
itself relies on Smirnov's result that crossing probabilities converge 
to
Cardy's formula.


http://front.math.ucdavis.edu/math.PR/0504036

---------------------------------------------------------------

3309. MINIMAX AND ADAPTIVE ESTIMATION OF THE WIGNER FUNCTION IN QUANTUM 
  HOMODYNE TOMOGRAPHY WITH NOISY DATA

Cristina Butucea (PMA and  MODALX) and  Madalin Guta and  Luis Artiles

We estimate the quantum state of a light beam from results of quantum
homodyne measurements performed on identically prepared quantum 
systems. The
state is represented through the Wigner function, a density on R2 which 
may
take negative values but must respect intrinsic positivity constraints 
imposed
by quantum physics. The effect of the losses due to detection 
inefficiencies
which are always present in a real experiment is the addition to the
tomographic data of independent Gaussian noise. We construct a kernel 
estimator
for the Wigner function and prove that it is minimax efficient for the
pointwise risk over a class of infinitely differentiable functions. For 
the L2
risk, we compute the upper bounds of a truncated kernel estimator over 
the same
classes, restricted to functions with sub-Gaussian asymptotic 
behaviour. We
construct adaptive estimators, i.e. which do not depend on the 
smoothness
parameters, and prove that in some set-ups they attain the minimax 
rates for
the corresponding smoothness class.


http://front.math.ucdavis.edu/math.PR/0504058

---------------------------------------------------------------

3310. POINT PROCESS MODEL OF 1/F NOISE VERSUS A SUM OF LORENTZIANS

B. Kaulakys and  V. Gontis and  and M. Alaburda

We present a simple point process model of $1/f^{\beta}$ noise, covering
different values of the exponent $\beta$. The signal of the model 
consists of
pulses or events. The interpulse, interevent, interarrival, recurrence 
or
waiting times of the signal are described by the general Langevin 
equation with
the multiplicative noise and stochastically diffuse in some interval 
resulting
in the power-law distribution. Our model is free from the requirement 
of a wide
distribution of relaxation times and from the power-law forms of the 
pulses. It
contains only one relaxation rate and yields $1/f^ {\beta}$ spectra in 
a wide
range of frequency. We obtain explicit expressions for the power 
spectra and
present numerical illustrations of the model. Further we analyze the 
relation
of the point process model of $1/f$ noise with the 
Bernamont-Surdin-McWhorter
model, representing the signals as a sum of the uncorrelated 
components. We
show that the point process model is complementary to the model based 
on the
sum of signals with a wide-range distribution of the relaxation times. 
In
contrast to the Gaussian distribution of the signal intensity of the 
sum of the
uncorrelated components, the point process exhibits asymptotically a 
power-law
distribution of the signal intensity. The developed multiplicative point
process model of $1/f^{\beta}$ noise may be used for modeling and 
analysis of
stochastic processes in different systems with the power-law 
distribution of
the intensity of pulsing signals.


http://front.math.ucdavis.edu/cond-mat/0504025

---------------------------------------------------------------

3311. A RANDOM WALK PROOF OF THE ERDOS-TAYLOR CONJECTURE

Jay Rosen

For the simple random walk in Z^2 we study those points which are 
visited an
unusually large number of times, and provide a new proof of the 
Erdos-Taylor
conjecture describing the number of visits to the most visited point.


http://front.math.ucdavis.edu/math.PR/0503108

---------------------------------------------------------------

3312. WHAT IS ALWAYS STABLE IN NONLINEAR FILTERING?

P. Chigansky and  R. Liptser

This note addresses certain stability properties of the nonlinear 
filtering
equation in discrete time. The available positive and negative results 
indicate
that much depends on the structure of the signal state space, its 
ergodic
properties and observations regularity. We show that certain predicting
estimates are stable under surprisingly general assumptions.


http://front.math.ucdavis.edu/math.PR/0504094

---------------------------------------------------------------

3313. HOW LIKELY IS AN I.I.D. DEGREE SEQUENCE TO BE GRAPHICAL?

Richard Arratia and Thomas M. Liggett

Given i.i.d. positive integer valued random variables D_1,...,D_n, one 
can
ask whether there is a simple graph on n vertices so that the degrees 
of the
vertices are D_1,...,D_n. We give sufficient conditions on the 
distribution of
D_i for the probability that this be the case to be asymptotically 0, 
{1/2} or
strictly between 0 and {1/2}. These conditions roughly correspond to 
whether
the limit of nP(D_i\geq n) is infinite, zero or strictly positive and 
finite.
This paper is motivated by the problem of modeling large communications
networks by random graphs.


http://front.math.ucdavis.edu/math.PR/0504096

---------------------------------------------------------------

3314. THE UNIVERSALITY CLASSES IN THE PARABOLIC ANDERSON MODEL

Remco van der Hofstad and  Wolfgang Koenig and  Peter Moerters

We discuss the long time behaviour of the parabolic Anderson model, the
Cauchy problem for the heat equation with random potential on $\Z^d$. We
consider general i.i.d. potentials and show that exactly \emph{four}
qualitatively different types of intermittent behaviour can occur. 
These four
universality classes depend on the upper tail of the potential 
distribution:
(1) tails at $\infty$ that are thicker than the double-exponential 
tails, (2)
double-exponential tails at $\infty$ studied by G\"artner and 
Molchanov, (3) a
new class called \emph{almost bounded potentials}, and (4) potentials 
bounded
from above studied by Biskup and K\"onig. The new class (3), which 
contains
both unbounded and bounded potentials, is studied in both the annealed 
and the
quenched setting. We show that intermittency occurs on unboundedly 
increasing
islands whose diameter is slowly varying in time. The characteristic
variational formulas describing the optimal profiles of the potential 
and of
the solution are solved explicitly by parabolas, respectively, Gaussian
densities.


http://front.math.ucdavis.edu/math.PR/0504102

---------------------------------------------------------------

3315. INVARIANCE PRINCIPLES FOR LABELED MOBILES AND BIPARTITE PLANAR 
MAPS

Jean-Fran\c{c}ois Marckert (LM-Versailles) and  Gr\'{e}gory Miermont  
(LM-Orsay)

A class of labeled trees, called mobiles, was introduced by Bouttier-di
Francesco and Guitter in order to generalize the bijective studies of 
planar
maps initiated by Cori-Vauquelin and Schaeffer. We prove an invariance
principle for rescaled random mobiles associated with bipartite random 
planar
maps under a Boltzmann distribution. We infer that the latter converge 
in a
certain sense to the Brownian map introduced by Marckert and Mokkadem, 
which
encompasses results of Chassaing and Schaeffer on quadrangulations 
(although in
a slightly different context). These results are derived from a new 
invariance
principle for a class of two-type Galton-Watson trees coupled with a 
spatial
motion, which are shown to converge to the Brownian snake.


http://front.math.ucdavis.edu/math.PR/0504110

---------------------------------------------------------------

3316. TRACY-WIDOM LIMIT FOR THE LARGEST EIGENVALUE OF A LARGE CLASS OF 
COMPLEX  WISHART MATRICES

Noureddine El Karoui

We study the limiting behavior of the largest eigenvalue of a large 
class of
complex Wishart matrices. In other words, let X be an n*p matrix, and 
let its
rows be i.i.d complex normal N_{C}(0,Sigma_p). We denote by H_p the 
spectral
distribution of Sigma_p, and call lambda_i's its ordered eigenvalues. 
Let us
call l_i's the ordered eigenvalues of X^*X and c the unique root in
[0,1/lambda_1(Sigma_p)) of the equation
   \int ((lambda c)/(1-\lambda c))^2 dH_p(lambda) = n/p. The main result 
of this
paper is that, under technical conditions on (Sigma_p,n,p), we have, 
when
n->\infty,
   (l_1(X^*X)-n mu)/(n^{1/3} sigma) -> TW_2 .
  We give explicit formulas for mu and sigma, that depend non trivially 
on c.
Here TW_2 denotes the Tracy-Widom law appearing in the study of the 
Gaussian
Unitary Ensemble.
   This theorem applies to a number of covariance models found in 
applications,
including well-behaved Toeplitz matrices and covariance matrices whose 
spectral
distribution is a sum of atoms (under some conditions on the mass of the
atoms). Generalizations of the theorem to certain spiked versions of 
models in
G and a.s statements about l_1/n are given. Most known examples of 
convergence
of the largest eigenvalue of a complex sample covariance matrix to this
Tracy-Widom law are subcases of this result.


http://front.math.ucdavis.edu/math.PR/0503109

---------------------------------------------------------------

3317. DETERMINANTAL PROCESSES AND INDEPENDENCE

J. Ben Hough and  Manjunath Krishnapur and  Yuval Peres and Balint Virag

We give a probabilistic introduction to determinantal and permanental 
point
processes. Determinantal processes arise in physics (fermions, 
eigenvalues of
random matrices) and in combinatorics (nonintersecting paths, random 
spanning
trees). They have the striking property that the number of points in a 
region
$D$ is a sum of independent Bernoulli random variables, with parameters 
which
are eigenvalues of the relevant operator on $L^2(D)$. Moreover, any
determinantal process can be represented as a mixture of determinantal
projection processes. We give a simple explanation for these known 
facts, and
establish analogous representations for permanental processes, with 
geometric
variables replacing the Bernoulli variables. These representations lead 
to
simple proofs of existence criteria and central limit theorems, and 
unify known
results on the distribution of absolute values in certain processes with
radially symmetric distributions.


http://front.math.ucdavis.edu/math.PR/0503110

---------------------------------------------------------------

3318. RANDOM WALK ON THE INCIPIENT INFINITE CLUSTER ON TREES

Martin T. Barlow and Takashi Kumagai

Let ${\cal G}$ be the incipient infinite cluster (IIC) for percolation 
on a
homogeneous tree of degree $n_0+1$. We obtain estimates for the 
transition
density of the continuous time simple random walk $Y$ on ${\cal G}$; the
process satisfies anomalous diffusion and has spectral dimension 4/3.


http://front.math.ucdavis.edu/math.PR/0503118

---------------------------------------------------------------

3319. QUANTITATIVE CONCENTRATION INEQUALITIES FOR EMPIRICAL MEASURES ON 
  NON-COMPACT SPACES

Francois Bolley and  Arnaud Guillin and  Cedric Villani

We establish some quantitative concentration estimates for the empirical
measure of many independent variables, in transportation distances. As 
an
application, we provide some error bounds for particle simulations in a 
model
mean field problem. The tools include coupling arguments, as well as 
regularity
and moments estimates for solutions of certain diffusive partial 
differential
equations.


http://front.math.ucdavis.edu/math.PR/0503123

---------------------------------------------------------------

3320. ON THE BIAS OF TRACEROUTE SAMPLING; OR, POWER-LAW DEGREE 
DISTRIBUTIONS  IN REGULAR GRAPHS

Dimitris Achlioptas and  Aaron Clauset and  David Kempe and  and 
Cristopher Moore

Understanding the structure of the Internet graph is a crucial step for
building accurate network models and designing efficient algorithms for
Internet applications. Yet, obtaining its graph structure is a 
surprisingly
difficult task, as edges cannot be explicitly queried. Instead, 
empirical
studies rely on traceroutes to build what are essentially single-source,
all-destinations, shortest-path trees. These trees only sample a 
fraction of
the network's edges, and a recent paper by Lakhina et al. found 
empirically
that the resuting sample is intrinsically biased. For instance, the 
observed
degree distribution under traceroute sampling exhibits a power law even 
when
the underlying degree distribution is Poisson.
   In this paper, we study the bias of traceroute sampling 
systematically, and,
for a very general class of underlying degree distributions, calculate 
the
likely observed distributions explicitly. To do this, we use a 
continuous-time
realization of the process of exposing the BFS tree of a random graph 
with a
given degree distribution, calculate the expected degree distribution 
of the
tree, and show that it is sharply concentrated. As example applications 
of our
machinery, we show how traceroute sampling finds power-law degree 
distributions
in both delta-regular and Poisson-distributed random graphs. Thus, our 
work
puts the observations of Lakhina et al. on a rigorous footing, and 
extends them
to nearly arbitrary degree distributions.


http://front.math.ucdavis.edu/cond-mat/0503087

---------------------------------------------------------------

3321. THE CRITICAL ISING MODEL ON TREES, CONCAVE RECURSIONS AND 
NONLINEAR  CAPACITY

Robin Pemantle and Yuval Peres

We consider the Ising model on a general tree under various boundary
conditions: all plus, free and spin-glass. In each case, we determine 
when the
root is influenced by the boundary values in the limit as the boundary 
recedes
to infinity. We obtain exact capacity criteria that govern behavior at 
critical
temperatures. For plus boundary conditions, an $L^3$ capacity arises. In
particular, on a spherically symmetric tree that has $n^c b^n$ vertices 
at
level $n$ (up to bounded factors), we prove that there is a unique Gibbs
measure for the ferromagnetic Ising model if and only if $c$ is at most 
1/2.
Our proofs are based on a new link between nonlinear recursions on 
trees and
$L^p$ capacities.


http://front.math.ucdavis.edu/math.PR/0503137

---------------------------------------------------------------

3322. HOW LARGE A DISC IS COVERED BY A RANDOM WALK IN $N$ STEPS?

Amir Dembo and  Yuval Peres and Jay Rosen

We show that the largest disc covered by a simple random walk on the 
planar
square lattice after $n$ steps has radius $n^{1/4+o(1)}$, thus 
resolving an
open problem of P. R\'ev\'esz (1990). We also show that almost surely, 
for
infinitely many values of $n$ it takes about $n^{1/2+o(1)}$ steps after 
step
$n$ for the random walk to reach the first previously unvisited site 
(and the
exponent 1/2 is sharp). This resolves a problem raised by P. R\'ev\'esz 
(1993).
Additional results on multiple covering are obtained as well.


http://front.math.ucdavis.edu/math.PR/0503139

---------------------------------------------------------------

3323. INFINITE DIMENSIONAL STOCHASTIC DIFFERENTIAL EQUATIONS OF  
ORNSTEIN-UHLENBECK TYPE

Siva R. Athreya and  Richard F. Bass and  Maria Gordina and  Edwin A. 
Perkins

We consider the operator $$\sL f(x)=\tfrac12 \sum_{i,j=1}^\infty
a_{ij}(x)\frac{\del^2 f}{\del x_i \del x_j}(x)-\sum_{i=1}^\infty \lam_i 
x_i
b_i(x) \frac{\del f}{\del x_i}(x).$$ We prove existence and uniqueness 
of
solutions to the martingale problem for this operator under appropriate
conditions on the $a_{ij}, b_i$, and $\lam_i$. The process 
corresponding to
$\sL$ solves an infinite dimensional stochastic differential equation 
similar
to that for the infinite dimensional Ornstein-Uhlenbeck process.


http://front.math.ucdavis.edu/math.PR/0503165

---------------------------------------------------------------

3324. ON CHORDAL AND BILATERAL SLE IN MULTIPLY CONNECTED DOMAINS

Robert O. Bauer and  Roland M. Friedrich

We discuss the possible candidates for conformally invariant random
non-self-crossing curves which begin and end on the boundary of a 
multiply
connected planar domain, and which satisfy a Markovian-type property. We
consider both, the case when the curve connects a boundary component to 
itself
(chordal), and the case when the curve connects two different boundary
components (bilateral). We establish appropriate extensions of Loewner's
equation to multiply connected domains for the two cases. We show that 
a curve
in the domain induces a motion on the boundary and that this motion is 
enough
to first recover the motion of the moduli of the domain and then, 
second, the
curve in the interior. For random curves in the interior we show that 
the
induced random motion on the boundary is not Markov if the domain is 
multiply
connected, but that the random motion on the boundary together with the 
random
motion of the moduli forms a Markov process. In the chordal case, we 
show that
this Markov process satisfies Brownian scaling and discuss how this 
limits the
possible conformally invariant random non-self-crossing curves. We show 
that
the possible candidates are labeled by a real constant and a function
homogeneous of degree minus one which describes the interaction of the 
random
curve with the boundary. We show that the random curve has the locality
property if the interaction term vanishes and the real parameter equals 
six.


http://front.math.ucdavis.edu/math.PR/0503178

---------------------------------------------------------------

3325. FROM N-PARAMETER FRACTIONAL BROWNIAN MOTIONS TO N-PARAMETER  
MULTIFRACTIONAL BROWNIAN MOTIONS

E. Herbin

Multifractional Brownian motion is an extension of the well-known 
fractional
Brownian motion where the Holder regularity is allowed to vary along 
the paths.
In this paper, two kind of multi-parameter extensions of mBm are 
studied: one
is isotropic while the other is not. For each of these processes, a 
moving
average representation, a harmonizable representation, and the 
covariance
structure are given. The Holder regularity is then studied. In 
particular, the
case of an irregular exponent function H is investigated. In this 
situation,
the almost sure pointwise and local Holder exponents of the 
multi-parameter mBm
are proved to be equal to the correspondent exponents of H. Eventually, 
a local
asymptotic self-similarity property is proved. The limit process can be 
another
process than fBm.


http://front.math.ucdavis.edu/math.PR/0503182

---------------------------------------------------------------

3326. EXAMPLES OF GROUPS THAT ARE MEASURE EQUIVALENT TO THE FREE GROUP

Damien Gaboriau (UMPA-ENSL)

Measure Equivalence (ME) is the measure theoretic counterpart of
quasi-isometry. This field grew considerably during the last years, 
developing
tools to distinguish between different ME classes of countable groups. 
On the
other hand, contructions of ME equivalent groups are very rare. We 
present a
new method, based on a notion of measurable free-factor, and we apply 
it to
exhibit a new family of groups that are measure equivalent to the free 
group.
We also present a quite extensive survey on results about Measure 
Equivalence
for countable groups.


http://front.math.ucdavis.edu/math.DS/0503181

---------------------------------------------------------------

3327. ORTHOGONAL POLYNOMIALS AND FLUCTUATIONS OF RANDOM MATRICES

Timothy Kusalik and  James A. Mingo and  and Roland Speicher

In this paper we establish a connection between the fluctuations of 
Wishart
random matrices, shifted Chebyshev polynomials, and planar diagrams 
whose
linear span form a basis for the irreducible representations of the 
annular
Temperly-Lieb algebra.


http://front.math.ucdavis.edu/math.OA/0503169

---------------------------------------------------------------

3328. COUNTING CONNECTED GRAPHS ASYMPTOTICALLY

Remco van der Hofstad and  Joel Spencer

We find the asymptotic number of connected graphs with $k$ vertices and
$k-1+l$ edges when $k,l$ approach infinity, reproving a result of 
Bender,
Canfield and McKay. We use the {\em probabilistic method}, analyzing
breadth-first search on the random graph $G(k,p)$ for an appropriate 
edge
probability $p$. Central is analysis of a random walk with fixed 
beginning and
end which is tilted to the left.


http://front.math.ucdavis.edu/math.CO/0502579

---------------------------------------------------------------

3329. ON Q-FUNCTIONAL EQUATIONS AND EXCURSION MOMENTS

Christoph Richard

We analyse q-functional equations arising from tree-like combinatorial
structures, which are counted by size, internal path length and certain
generalisations thereof. The corresponding counting parameters are 
labelled by
an integer k>1. We show the existence of a joint limit distribution for 
these
parameters in the limit of infinite size, if the size generating 
function has a
square root as dominant singularity. The limit distribution coincides 
with that
of integrals of (k-1)th powers of the standard Brownian excursion. Our 
method
yields a recursion for the moments of the joint distribution and admits 
an
extension to other types of singularities.


http://front.math.ucdavis.edu/math.CO/0503198

---------------------------------------------------------------

3330. A SET-INDEXED FRACTIONAL BROWNIAN MOTION

E. Herbin and E. Merzbach

We define and prove the existence of a fractional Brownian motion 
indexed by
a collection of closed subsets of a measure space. This process is a
generalization of the set-indexed Brownian motion, when the condition of
independance is relaxed. Relations with the Levy fractional Brownian 
motion and
with the fractional Brownian sheet are studied. We prove stationarity 
of the
increments and a property of self-similarity with respect to the action 
of
solid motions. Regularity conditions are exhibited. Finally, behavior 
of the
set-indexed fractional Brownian motion along increasing paths is 
analysed.


http://front.math.ucdavis.edu/math.PR/0503211

---------------------------------------------------------------

3331. ENTROPY-DRIVEN PHASE TRANSITION IN A POLYDISPERSE HARD-RODS 
LATTICE  SYSTEM

Dmitry Ioffe and  Yvan Velenik (LMRS) and  Milos Zahradnik

We study a system of rods on the 2d square lattice, with hard-core 
exclusion.
Each rod has a length between 2 and N. We show that, when N is 
sufficiently
large, and for suitable fugacity, there are several distinct Gibbs 
states, with
orientational long-range order. This is in sharp contrast with the case 
N=2
(the monomer-dimer model), for which Heilmann and Lieb proved absence 
of phase
transition at any fugacity. This is the first example of a pure 
hard-core
system with phases displaying orientational order, but not 
translational order;
this is a fundamental characteristic feature of liquid crystals.


http://front.math.ucdavis.edu/math.PR/0503222

---------------------------------------------------------------

3332. AN INDUCTIVE PROOF OF THE BERRY-ESSEEN THEOREM FOR CHARACTER 
RATIOS

Jason Fulman

Bolthausen used a variation of Stein's method to give an inductive 
proof of
the Berry-Esseen theorem for sums of independent, identically 
distributed
random variables. We modify this technique to prove a Berry-Esseen 
theorem for
character ratios of a random representation of the symmetric group on
transpositions. An analogous result is proved for Jack measure on 
partitions.


http://front.math.ucdavis.edu/math.CO/0503227

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3333. MAX-SEMI-SELFDECOMPOSABLE LAWS AND RELATED PROCESSES

S Satheesh and E Sandhya

Methods of construction of Max-semi-selfdecompsable laws are given.
Implications of this method in random time changed extremal processes 
are
discussed. Max-autoregressive model is introduced and characterized 
using the
max-semi-selfdecompsable laws and exponential max-semi-stable laws. Some
comments regarding the infinite divisibility of semi-stable and 
max-semi-stable
laws are given.


http://front.math.ucdavis.edu/math.PR/0503232

---------------------------------------------------------------

3334. DISCRETE INTERPOLATION BETWEEN MONOTONE PROBABILITY AND FREE 
PROBABILITY

Romuald Lenczewski and  Rafal Salapata

We construct a sequence of states called m-monotone product states 
which give
a discrete interpolation between the monotone product of states of 
Muraki and
the free product of states of Avitzour and Voiculescu in free 
probability. We
derive the associated basic limit theorems and develop the 
combinatorics based
on non-crossing ordered partitions with monotone order starting from 
depth m.
The Hilbert space representations of the limit mixed moments in the 
invariance
principle lead to m-monotone Gaussian operators living in m-monotone 
Fock
spaces, which are truncations of the free Fock space over the 
square-integrable
functions on the non-negative real line (m=1 gives the monotone Fock 
space). A
new type of combinatorics of inner blocks leads to explicit formulas 
for the
mixed moments of m-monotone Gaussian operators, which are new even in 
the case
of monotone independent Gaussian operators with arcsine distributions.


http://front.math.ucdavis.edu/math.QA/0502570

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3335. RIFFLE SHUFFLES OF DECKS WITH REPEATED CARDS

Mark Conger and D. Viswanath

By a well-known result of Bayer and Diaconis, the maximum entropy model 
of
the common riffle shuffle implies that the number of riffle shuffles 
necessary
to mix a standard deck of 52 cards is either 7 or 11 -- with the former 
number
applying when the metric used to define mixing is the total variation 
distance
and the later when it is the separation distance. This and other related
results assume all 52 cards in the deck to be distinct and require all 
$52!$
permutations of the deck to be almost equally likely for the deck to be
considered well mixed. In many instances, not all cards in the deck are
distinct and only the sets of cards dealt out to players, and not the 
order in
which they are dealt out to each player, needs to be random. We derive
transition probabilities under riffle shuffles between decks with 
repeated
cards to cover some instances of the type just described. We focus on 
decks
with cards all of which are labeled either 1 or 2 and describe the 
consequences
of having a symmetric starting deck of the form $1,...,1,2...,2$ or 
$1,2,...,
1,2$. Finally, we consider mixing times for common card games.


http://front.math.ucdavis.edu/math.PR/0503233

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3336. BERMUDAN OPTION PRICING BASED ON PIECEWISE HARMONIC INTERPOLATION 
AND  THE R\'EDUITE

Frederik S. Herzberg

We consider an iterative Bermudan option pricing algorithm based on 
piecewise
harmonic interpolation and give an explicit constructive 
characterisation of
the smallest fixed point of the iteration step as the approximate price 
of the
perpetual Bermudan option. The same arguments work for a related 
iterative
algorithm based on the approximation of subharmonic functions via the 
r\'eduite
associated with a given closed $F_{\sigma}$ subset of $\RR^d$.


http://front.math.ucdavis.edu/math.PR/0503234

---------------------------------------------------------------

3337. A BRIEF NOTE ON THE SOUNDNESS OF BERMUDAN OPTION PRICING VIA 
CUBATURE

Frederik S. Herzberg

The subject of this study is an iterative Bermudan option pricing 
algorithm
based on (high-dimensional) cubature. We show that the sequence of 
Bermudan
prices (as functions of the underlying assets' logarithmic start prices)
resulting from the iteration is bounded and increases monotonely to the
approximate perpetual Bermudan option price; the convergence is linear 
in the
supremum norm with the discount factor being the convergence factor.
Furthermore, we prove a characterisation of this approximated perpetual
Bermudan price as the smallest fixed point of the iteration procedure.


http://front.math.ucdavis.edu/math.PR/0503235

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3338. SPHERICAL ASYMPTOTICS FOR THE ROTOR-ROUTER MODEL IN Z^D

Lionel Levine and  Yuval Peres

The rotor-router model is a deterministic analogue of random walk 
invented by
Jim Propp. It can be used to define a deterministic aggregation model 
analogous
to internal diffusion limited aggregation. We prove an isoperimetric 
inequality
for the exit time of simple random walk from a finite region in Z^d, 
and use
this to prove that the shape of the rotor-router aggregation model in 
Z^d,
suitably rescaled, converges to a Euclidean ball in R^d.


http://front.math.ucdavis.edu/math.PR/0503251

---------------------------------------------------------------

3339. SOME EXPLICIT KREIN REPRESENTATIONS OF CERTAIN SUBORDINATORS, 
INCLUDING  THE GAMMA PROCESS

Catherine Donati-Martin (PMA) and  Marc Yor (PMA)

We give a representation of the Gamma subordinator as a Krein 
functional of
Brownian motion, using the known representations for stable 
subordinators and
Esscher transforms. In particular, we have obtained Krein 
representations of
the subordinators which govern the two parameter Poisson-Dirichlet 
family of
distributions.


http://front.math.ucdavis.edu/math.PR/0503254

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3340. AN INVARIANCE PRINCIPLE FOR CONDITIONED TREES

Jean-Francois Le Gall (DMA-ENS Paris)

We consider Galton-Watson trees associated with a critical offspring
distribution and conditioned to have exactly $n$ vertices. These trees 
are
embedded in the real line by affecting spatial positions to the 
vertices, in
such a way that the increments of the spatial positions along edges of 
the tree
are independent variables distributed according to a symmetric 
probability
distribution on the real line. We then condition on the event that all 
spatial
positions are nonnegative. Under suitable assumptions on the offspring
distribution and the spatial displacements, we prove that these 
conditioned
spatial trees converge as $n\to\infty$, modulo an appropriate rescaling,
towards the conditioned Brownian tree that was studied in previous work.
Applications are given to asymptotics for random quadrangulations.


http://front.math.ucdavis.edu/math.PR/0503263

---------------------------------------------------------------

3341. ON GENERALIZED COMPUTABLE UNIVERSAL PRIORS AND THEIR CONVERGENCE

Marcus Hutter

Solomonoff unified Occam's razor and Epicurus' principle of multiple
explanations to one elegant, formal, universal theory of inductive 
inference,
which initiated the field of algorithmic information theory. His 
central result
is that the posterior of the universal semimeasure M converges rapidly 
to the
true sequence generating posterior mu, if the latter is computable. 
Hence, M is
eligible as a universal predictor in case of unknown mu. The first part 
of the
paper investigates the existence and convergence of computable universal
(semi)measures for a hierarchy of computability classes: recursive, 
estimable,
enumerable, and approximable. For instance, M is known to be 
enumerable, but
not estimable, and to dominate all enumerable semimeasures. We present 
proofs
for discrete and continuous semimeasures. The second part investigates 
more
closely the types of convergence, possibly implied by universality: in
difference and in ratio, with probability 1, in mean sum, and for 
Martin-Loef
random sequences. We introduce a generalized concept of randomness for
individual sequences and use it to exhibit difficulties regarding these 
issues.
In particular, we show that convergence fails (holds) on 
generalized-random
sequences in gappy (dense) Bernoulli classes.


http://front.math.ucdavis.edu/cs.LG/0503026

---------------------------------------------------------------

3342. THE STABLE MANIFOLD THEOREM FOR SEMILINEAR STOCHASTIC EVOLUTION  
EQUATIONS AND STOCHASTIC PARTIAL DIFFERENTIAL EQUATIONS I: THE 
STOCHASTIC
   SEMIFLOW

Salah-Eldin A Mohammed and  Tusheng Zhang and  Huaizhong Zhao

The main objective of this work is to characterize the pathwise local
structure of solutions of semilinear stochastic evolution equations 
(see's) and
stochastic partial differential equations (spde's) near stationary 
solutions.
Such characterization is realized through the long-term behavior of the
solution field near stationary points. The analysis falls in two parts 
I, II.
In Part I (this paper), we prove a general existence and compactness 
theorem
for $C^k$-cocycles of semilinear see's and spde's. Our results cover a 
large
class of semilinear see's as well as certain semilinear spde's with
non-Lipschitz terms such as stochastic reaction diffusion equations and 
the
stochastic Burgers equation with additive infinite-dimensional noise. 
In Part
II of this work ([M-Z-Z]), we establish a local stable manifold theorem 
for
non-linear see's and spde's.


http://front.math.ucdavis.edu/math.PR/0503320

---------------------------------------------------------------

3343. THE STABLE MANIFOLD THEOREM FOR SEMILINEAR STOCHASTIC EVOLUTION  
EQUATIONS AND STOCHASTIC PARTIAL DIFFERENTIAL EQUATIONS II: EXISTENCE 
OF
   STABLE AND UNSTABLE MANIFOLDS

Salah-Eldin A. Mohammed and  Tusheng Zhang and  Huaizhong Zhao

This article is a sequel to [M.Z.Z.1] aimed at completing the
characterization of the pathwise local structure of solutions of 
semilinear
stochastic evolution equations (see's) and stochastic partial 
differential
equations (spde's) near stationary solutions. Stationary solution are 
viewed as
random points in the infinite-dimensional state space, and the 
characterization
is expressed in terms of the almost sure long-time behavior of 
trajectories of
the equation in relation to the stationary solution. More specifically, 
we
establish local stable manifold theorems for semilinear see's and spde's
(Theorems 4.1-4.4). These results give smooth stable and unstable 
manifolds in
the neighborhood of a hyperbolic stationary solution of the underlying
stochastic equation. The stable and unstable manifolds are stationary, 
live in
a stationary tubular neighborhood of the stationary solution and are
asymptotically invariant under the stochastic semiflow of the see/spde. 
The
proof uses infinite-dimensional multiplicative ergodic theory 
techniques and
interpolation arguments (Theorem 2.1).


http://front.math.ucdavis.edu/math.PR/0503321

---------------------------------------------------------------

3344. BOUNDARY HARNACK PRINCIPLE FOR FRACTIONAL POWERS OF LAPLACIAN ON 
THE  SIERPINSKI CARPET

Andrzej Stos (LMP-Clermont)

We prove the Boundary Harnack Principle related to fractional powers of
Laplacian for some natural regions in the two-dimensional Sierpinski 
carpet.
This is a natual application of a probabilistic method based on the
Ikeda-Watanabe formula


http://front.math.ucdavis.edu/math.PR/0503333

---------------------------------------------------------------

3345. A NOTE ON EXACT LIKELIHOODS OF THE CARR-WU MODELS FOR LEVERAGE 
EFFECTS  AND VOLATILITY IN FINANCIAL ECONOMICS

Lancelot F. James

Recently Carr and Wu (2004, 2005) and also Huang and Wu (2004) show 
that most
stochastic processes used in traditional option pricing models can be 
cast as
special cases of time-changed L\'evy processes. In particular these are 
models
which can be tailored to exhibit correlated jumps in both the log price 
of
assets and the instantaneous volatility. Naturally similar to a recent 
work of
Barndorff-Nielsen and Shephard (2001a, b), such models may be used in a
likelihood based framework. These likelihoods are based on the 
unobserved
integrated volatility, rather than the instantaneous volatility. James 
(2005)
establishes general results for the likelihood and estimation of a 
large class
of such models which include possible leverage effects. In this note we 
show
that exact expressions for likelihood models based on generalizations 
of Carr
and Wu (2005) and Huang and Wu (2005), follow essentially from the 
arguments in
Theorem 5.1 in James (2005) with some slight modification. This serves 
to
formally verify a claim made by James (2005).


http://front.math.ucdavis.edu/math.ST/0503314

---------------------------------------------------------------

3346. POISSON KERNELS OF HALF-SPACES IN REAL HYPERBOLIC SPACES

T. Byczkowski and  P. Graczyk and  A. Stos

We provide an integral formula for the Poisson kernel of half-spaces for
Brownian motion in real hyperbolic space $\H^n$. This enables us to find
asymptotic properties of the kernel. Our starting point is the formula 
for its
Fourier transform. When $n=3$, 4 or 6 we give an explicit formula for 
the
Poisson kernel itself. In the general case we give various asymptotics 
and show
convergence to the Poisson kernel of $\H^n$.


http://front.math.ucdavis.edu/math.PR/0503372

---------------------------------------------------------------

3347. DOOB'S MAXIMAL IDENTITY, MULTIPLICATIVE DECOMPOSITIONS AND 
ENLARGEMENTS  OF FILTRATIONS

A. Nikeghbali and  M. Yor

In the theory of progressive enlargements of filtrations, the 
supermartingale
$Z_{t}=\mathbf{P}(g>t\mid \mathcal{F}_{t}) $ associated with an honest 
time
$g$, and its additive (Doob-Meyer) decomposition, play an essential 
role. In
this paper, we propose an alternative approach, using a multiplicative
representation for the supermartingale $Z_{t}$, based on Doob's maximal
identity. We thus give new examples of progressive enlargements. 
Moreover, we
give, in our setting, a proof of the decomposition formula for 
martingales,
using initial enlargement techniques, and use it to obtain some path
decompositions given the maximum or minimum of some processes.


http://front.math.ucdavis.edu/math.PR/0503386

---------------------------------------------------------------

3348. AN ANNIHILATING-BRANCHING PARTICLE MODEL FOR THE HEAT EQUATION 
WITH  AVERAGE TEMPERATURE ZERO

Krzysztof Burdzy and Jeremy Quastel

We consider two species of particles performing random walks in a 
domain in
Euclidean space with reflecting boundary conditions, which annihilate on
contact. In addition there is a conservation law so that the total 
number of
particles of each type is preserved: When the two particles of different
species annihilate each other, particles of each species, chosen at 
random,
give birth. We assume initially equal numbers of each species and show 
that the
system has a diffusive scaling limit in which the densities of the two 
species
are well approximated by the positive and negative parts of the 
solution of the
heat equation normalized to have constant $L^1$ norm. In particular, 
the higher
Neumann eigenfunctions appear as asymptotically stable states at the 
diffusive
time scale.


http://front.math.ucdavis.edu/math.PR/0503395

---------------------------------------------------------------

3349. THE REVERSIBLE NEAREST PARTICLE SYSTGEMS ON A FINITE INTERVAL

Dayue Chen and  Juxin Liu and  Fuxi Zhang

In this paper we study a one-parameter family of attractive reversible
nearest particle system on a finite interval. As the length of the 
interval
increases, the time that the nearest particle system first hits the 
empty set
increases in different order, from logarithmic to exponential, 
according to the
intensity of interaction. In particular, at the critical case, the first
hitting time increases in a polynomial order.


http://front.math.ucdavis.edu/math.PR/0503409

---------------------------------------------------------------

3350. INSIDE SINGULARITY SETS OF RANDOM GIBBS MEASURES

Julien Barral and  Stephane Seuret

We evaluate the scale at which the multifractal structure of some random
Gibbs measures becomes discernible. The value of this scale is obtained 
through
what we call the growth speed in H\"older singularity sets of a Borel 
measure.
This growth speed yields new information on the multifractal behavior 
of the
rescaled copies involved in the structure of statistically self-similar 
Gibbs
measures. Our results are useful to understand the multifractal nature 
of
various heterogeneous jump processes.


http://front.math.ucdavis.edu/math.PR/0503420

---------------------------------------------------------------

3351. RENEWAL OF SINGULARITY SETS OF STATISTICALLY SELF-SIMILAR MEASURES

Julien Barral and  Stephane Seuret

This paper investigates new properties concerning the multifractal 
structure
of a class of statistically self-similar measures. These measures 
include the
well-known Mandelbrot multiplicative cascades, sometimes called 
independent
random cascades. We evaluate the scale at which the multifractal 
structure of
these measures becomes discernible. The value of this scale is obtained 
through
what we call the growth speed in H\"older singularity sets of a Borel 
measure.
This growth speed yields new information on the multifractal behavior 
of the
rescaled copies involved in the structure of statistically self-similar
measures. Our results are useful to understand the multifractal nature 
of
various heterogeneous jump processes.


http://front.math.ucdavis.edu/math.PR/0503421

---------------------------------------------------------------

3352. A POLYHEDRAL MARKOV FIELD - PUSHING THE ARAK-SURGAILIS 
CONSTRUCTION INTO  THREE DIMENSIONS

Tomasz Schreiber

The purpose of the paper is to construct a polyhedral Markov field in
${\mathbb R}^3$ in analogy with the planar construction of the original 
Arak
(1982) polygonal Markov field. We provide a dynamic construction of the 
process
in terms of evolution of two-dimensional multi-edge systems tracing 
polyhedral
boundaries of the field in three-dimensional time-space. We also give a 
general
algorithm for simulating Gibbsian modifications of the constructed 
polyhedral
field.


http://front.math.ucdavis.edu/math.PR/0503429

---------------------------------------------------------------

3353. BAYSIAN INFERENCE VIA CLASSES OF NORMALIZED RANDOM MEASURES

Lancelot F. James and  Antonio Lijoi and Igor Pruenster

One of the main research areas in Bayesian Nonparametrics is the 
proposal and
study of priors which generalize the Dirichlet process. Here we exploit
theoretical properties of Poisson random measures in order to provide a
comprehensive Bayesian analysis of random probabilities which are 
obtained by
an appropriate normalization. Specifically we achieve explicit and 
tractable
forms of the posterior and the marginal distributions, including an 
explicit
and easily used description of generalizations of the important
Blackwell-MacQueen P\'olya urn distribution. Such simplifications are 
achieved
by the use of a latent variable which admits quite interesting 
interpretations
which allow to gain a better understanding of the behaviour of these 
random
probability measures. It is noteworthy that these models are 
generalizations of
models considered by Kingman (1975) in a non-Bayesian context. Such 
models are
known to play a significant role in a variety of applications including
genetics, physics, and work involving random mappings and assemblies. 
Hence our
analysis is of utility in those contexts as well. We also show how our 
results
may be applied to Bayesian mixture models and describe computational 
schemes
which are generalizations of known efficient methods for the case of the
Dirichlet process. We illustrate new examples of processes which can 
play the
role of priors for Bayesian nonparametric inference and finally point 
out some
interesting connections with the theory of generalized gamma 
convolutions
initiated by Thorin and further developed by Bondesson.


http://front.math.ucdavis.edu/math.ST/0503394

---------------------------------------------------------------

3354. A STOCHASTIC APPROXIMATION ALGORITHM WITH MULTIPLICATIVE STEP 
SIZE  ADAPTATION

Alexander Plakhov and  Pedro Cruz

An algorithm of searching a zero of an unknown undimensional function is
considered, measured at a point x with some error. The step sizes are 
random
positive values and are calculated according to the rule: if two 
consecutive
iterations are in same direction step is multiplied by u>1, otherwise, 
it is
multiplied by 0<d<1. The function may have one or more zeros; the 
random values
are independent and identically distributed, with zero mean and finite
variance. Under some additional assumptions on the conditions on the two
parameters u and d almost sure convergence of the sequence as well as 
under
some conditions is guaranteed almost sure divergence. In particular, if 
the
error distribuition as median 0 and zero probability for particular 
poinst then
it is established that for ud<1, convergence takes place, and for ud>1,
divergence. Due to the multiplicative rule of updating of the step, it 
is
natural to expect that the sequence converges rapidly: like a geometric
progression (if convergence takes place), but the limit value may not 
coincide
with, but instead, approximates one of zeros of the function. By 
adjusting the
parameters u and d, one can reach necessary precision of approximation; 
higher
precision is obtained at the expense of lower convergence rate.


http://front.math.ucdavis.edu/math.ST/0503434

---------------------------------------------------------------

3355. ON APPROXIMATE PATTERN MATCHING FOR A CLASS OF GIBBS RANDOM FIELDS

J.R. Chazottes and  F. Redig and  E. Verbitskiy

We prove an exponential approximation for the law of approximate 
occurrence
of typical patterns for a class of Gibbsian sources on the lattice 
$\mathbb
Z^d$, $d\ge 2$. From this result, we deduce a law of large numbers and 
a large
deviation result for the the waiting time of distorted patterns.


http://front.math.ucdavis.edu/math.PR/0503008

---------------------------------------------------------------

3356. THE BASIC REPRESENTATION OF THE CURRENT GROUP O(N,1)^X IN THE L^2 
SPACE  OVER THE GENERALIZED LEBESGUE MEASURE

A.M.Vershik and  M.I.Graev

We give the realization of the representation of the current group 
O(n,1)^X
where X is a manifold, in the Hilbert space of L^2(F,\nu) of 
functionals on the
the space F of the generalized functions on the manifold X which are 
square
integrable over measure \nu which is related to a distinguish Levy 
process with
values in R^{n-1} which generalized one dimensional gamma process. 
Unipotent
subgroup of the group O(n,1)^X acts as the group of multiplicators. 
Measure \nu
is sigma-finite and invariant under the action current group O(n-1)^X. 
Ther
case of n=2 (SL(2,R^X)) was considered before in the series of papers 
starting
from the article Vershik-Gel'fand-Graev (1973).


http://front.math.ucdavis.edu/math.RT/0503404

---------------------------------------------------------------

3357. DYNAMIC IMPORTANCE SAMPLING FOR UNIFORMLY RECURRENT MARKOV CHAINS

Paul Dupuis and Hui Wang

Importance sampling is a variance reduction technique for efficient
estimation of rare-event probabilities by Monte Carlo. In standard 
importance
sampling schemes, the system is simulated using an a priori fixed 
change of
measure suggested by a large deviation lower bound analysis. Recent 
work,
however, has suggested that such schemes do not work well in many 
situations.
In this paper we consider dynamic importance sampling in the setting of
uniformly recurrent Markov chains. By ``dynamic'' we mean that in the 
course of
a single simulation, the change of measure can depend on the outcome of 
the
simulation up till that time. Based on a control-theoretic approach to 
large
deviations, the existence of asymptotically optimal dynamic schemes is
demonstrated in great generality. The implementation of the dynamic 
schemes is
carried out with the help of a limiting Bellman equation. Numerical 
examples
are presented to contrast the dynamic and standard schemes.


http://front.math.ucdavis.edu/math.PR/0503454

---------------------------------------------------------------

3358. THE EXIT PROBLEM FOR DIFFUSIONS WITH TIME-PERIODIC DRIFT AND 
STOCHASTIC  RESONANCE

Samuel Herrmann and Peter Imkeller

Physical notions of stochastic resonance for potential diffusions in
periodically changing double-well potentials such as the spectral power
amplification have proved to be defective. They are not robust for the 
passage
to their effective dynamics: continuous-time finite-state Markov chains
describing the rough features of transitions between different domains 
of
attraction of metastable points. In the framework of one-dimensional 
diffusions
moving in periodically changing double-well potentials we design a new 
notion
of stochastic resonance which refines Freidlin's concept of 
quasi-periodic
motion. It is based on exact exponential rates for the transition 
probabilities
between the domains of attraction which are robust with respect to the 
reduced
Markov chains. The quality of periodic tuning is measured by the 
probability
for transition during fixed time windows depending on a time scale 
parameter.
Maximizing it in this parameter produces the stochastic resonance 
points.


http://front.math.ucdavis.edu/math.PR/0503455

---------------------------------------------------------------

3359. LEARNING MIXTURES OF SEPARATED NONSPHERICAL GAUSSIANS

Sanjeev Arora and Ravi Kannan

Mixtures of Gaussian (or normal) distributions arise in a variety of
application areas. Many heuristics have been proposed for the task of 
finding
the component Gaussians given samples from the mixture, such as the EM
algorithm, a local-search heuristic from Dempster, Laird and Rubin [J. 
Roy.
Statist. Soc. Ser. B 39 (1977) 1-38]. These do not provably run in 
polynomial
time. We present the first algorithm that provably learns the component
Gaussians in time that is polynomial in the dimension. The Gaussians 
may have
arbitrary shape, but they must satisfy a ``separation condition'' which 
places
a lower bound on the distance between the centers of any two component
Gaussians. The mathematical results at the heart of our proof are 
``distance
concentration'' results--proved using isoperimetric inequalities--which
establish bounds on the probability distribution of the distance 
between a pair
of points generated according to the mixture. We also formalize the more
general problem of max-likelihood fit of a Gaussian mixture to 
unstructured
data.


http://front.math.ucdavis.edu/math.PR/0503457

---------------------------------------------------------------

3360. FAST SIMULATION OF NEW COINS FROM OLD

Serban Nacu and Yuval Peres

Let S\subset (0,1). Given a known function f:S\to (0,1), we consider the
problem of using independent tosses of a coin with probability of heads 
p
(where p\in S is unknown) to simulate a coin with probability of heads 
f(p). We
prove that if S is a closed interval and f is real analytic on S, then 
f has a
fast simulation on S (the number of p-coin tosses needed has exponential
tails). Conversely, if a function f has a fast simulation on an open 
set, then
it is real analytic on that set.


http://front.math.ucdavis.edu/math.PR/0503458

---------------------------------------------------------------

3361. STRUCTURE OF LARGE RANDOM HYPERGRAPHS

R. W. R. Darling and J. R. Norris

The theme of this paper is the derivation of analytic formulae for 
certain
large combinatorial structures. The formulae are obtained via fluid 
limits of
pure jump-type Markov processes, established under simple conditions on 
the
Laplace transforms of their Levy kernels. Furthermore, a related 
Gaussian
approximation allows us to describe the randomness which may persist in 
the
limit when certain parameters take critical values. Our method is quite
general, but is applied here to vertex identifiability in random 
hypergraphs. A
vertex v is identifiable in n steps if there is a hyperedge containing 
v all of
whose other vertices are identifiable in fewer steps.
   We say that a hyperedge is identifiable if every one of its vertices 
is
identifiable. Our analytic formulae describe the asymptotics of the 
number of
identifiable vertices and the number of identifiable hyperedges for a
Poisson(\beta) random hypergraph \Lambda on a set V of N vertices, in 
the limit
as N\to \infty. Here \beta is a formal power series with nonnegative
coefficients \beta_0,\beta_1,..., and (\Lambda(A))_{A\subseteq V} are
independent Poisson random variables such that \Lambda(A), the number of
hyperedges on A, has mean N\beta_j/\pmatrixN j whenever |A|=j.


http://front.math.ucdavis.edu/math.PR/0503460

---------------------------------------------------------------

3362. LARGE DEVIATIONS FOR TEMPLATE MATCHING BETWEEN POINT PROCESSES

Zhiyi Chi

We study the asymptotics related to the following matching criteria for 
two
independent realizations of point processes X\sim X and Y\sim Y. Given 
l>0,
X\cap [0,l) serves as a template. For each t>0, the matching score 
between the
template and Y\cap [t,t+l) is a weighted sum of the Euclidean distances 
from
y-t to the template over all y\in Y\cap [t,t+l). The template matching 
criteria
are used in neuroscience to detect neural activity with certain 
patterns. We
first consider W_l(\theta), the waiting time until the matching score 
is above
a given threshold \theta. We show that whether the score is scalar- or
vector-valued, (1/l)\log W_l(\theta) converges almost surely to a 
constant
whose explicit form is available, when X is a stationary ergodic 
process and Y
is a homogeneous Poisson point process. Second, as l\to\infty, a strong
approximation for -\log [\Pr{W_l(\theta)=0}] by its rate function is
established, and in the case where X is sufficiently mixing, the rates, 
after
being centered and normalized by \sqrtl, satisfy a central limit 
theorem and
almost sure invariance principle. The explicit form of the variance of 
the
normal distribution is given for the case where X is a homogeneous 
Poisson
process as well.


http://front.math.ucdavis.edu/math.PR/0503463

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3363. RANDOM K-SAT: TWO MOMENTS SUFFICE TO CROSS A SHARP THRESHOLD

Dimitris Achlioptas and Cristopher Moore

Many NP-complete constraint satisfaction problems appear to undergo a 
"phase
transition'' from solubility to insolubility when the constraint 
density passes
through a critical threshold. In all such cases it is easy to derive 
upper
bounds on the location of the threshold by showing that above a certain 
density
the first moment (expectation) of the number of solutions tends to 
zero. We
show that in the case of certain symmetric constraints, considering the 
second
moment of the number of solutions yields nearly matching lower bounds 
for the
location of the threshold. Specifically, we prove that the threshold 
for both
random hypergraph 2-colorability (Property B) and random Not-All-Equal 
k-SAT is
2^{k-1} ln 2 -O(1). As a corollary, we establish that the threshold for 
random
k-SAT is of order Theta(2^k), resolving a long-standing open problem.


http://front.math.ucdavis.edu/cond-mat/0310227

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3364. DISTRIBUTION OF THE SIZE OF A LARGEST PLANAR MATCHING AND LARGEST 
PLANAR  SUBGRAPH IN RANDOM BIPARTITE GRAPHS

Marcos Kiwi and  Martin Loebl

We address the following question: When a randomly chosen regular 
bipartite
multi--graph is drawn in the plane in the ``standard way'', what is the
distribution of its maximum size planar matching (set of non--crossing 
disjoint
edges) and maximum size planar subgraph (set of non--crossing edges 
which may
share endpoints)? The problem is a generalization of the Longest 
Increasing
Sequence (LIS) problem (also called Ulam's problem). We present 
combinatorial
identities which relate the number of $r$-regular bipartite 
multi--graphs with
maximum planar matching (maximum planar subgraph)of at most $d$ edges 
to a
signed sum of restricted lattice walks in $\ZZ^d$, and to the number of 
pairs
of standard Young tableaux of the same shape and with a 
``descend--type''
property. Our results are obtained via generalizations of two 
combinatorial
proofs through which Gessel's identity can be obtained (an identity 
that is
crucial in the derivation of a bivariate generating function associated 
to the
distribution of LISs, and key to the analytic attack on Ulam's problem).


http://front.math.ucdavis.edu/math.CO/0503465

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3365. THE SHANNON INFORMATION OF FILTRATIONS AND THE ADDITIONAL 
LOGARITHMIC  UTILITY OF INSIDERS

Stefan Ankirchner and  Steffen Dereich and Peter Imkeller

The background for the general mathematical link between utility and
information theory investigated in this paper is a simple financial 
market
model with two kinds of small traders: less informed traders and 
insiders,
whose extra information is represented by an enlargement of the other 
agents'
filtration. The expected logarithmic utility increment, i.e. the 
difference of
the insider's and the less informed trader's expected logarithmic 
utility is
described in terms of the information drift, i.e. the drift one has to
eliminate in order to perceive the price dynamics as a martingale from 
the
insider's perspective. On the one hand, we describe the information 
drift in a
very general setting by natural quantities expressing the probabilistic 
better
informed view of the world. This on the other hand allows us to 
identify the
additional utility by entropy related quantities known from information 
theory.
In particular, in a complete market in which the insider has some fixed
additional information during the entire trading interval, its utility
increment can be represented by the Shannon information of his extra 
knowledge.
For general markets, and in some particular examples, we provide 
estimates of
maximal utility by information inequalities.


http://front.math.ucdavis.edu/math.PR/0503013

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3366. DIFFUSION MAPS, SPECTRAL CLUSTERING AND REACTION COORDINATES OF  
DYNAMICAL SYSTEMS

Boaz Nadler and  Stephane Lafon and  Ronald R. Coifman and  Ioannis G. 
Kevrekidis

A central problem in data analysis is the low dimensional 
representation of
high dimensional data, and the concise description of its underlying 
geometry
and density. In the analysis of large scale simulations of complex 
dynamical
systems, where the notion of time evolution comes into play, important 
problems
are the identification of slow variables and dynamically meaningful 
reaction
coordinates that capture the long time evolution of the system. In this 
paper
we provide a unifying view of these apparently different tasks, by 
considering
a family of {\em diffusion maps}, defined as the embedding of complex 
(high
dimensional) data onto a low dimensional Euclidian space, via the 
eigenvectors
of suitably defined random walks defined on the given datasets. 
Assuming that
the data is randomly sampled from an underlying general probability
distribution $p(\x)=e^{-U(\x)}$, we show that as the number of samples 
goes to
infinity, the eigenvectors of each diffusion map converge to the 
eigenfunctions
of a corresponding differential operator defined on the support of the
probability distribution. Different normalizations of the Markov chain 
on the
graph lead to different limiting differential operators. One 
normalization
gives the Fokker-Planck operators with the same potential U(x), best 
suited for
the study of stochastic differential equations as well as for 
clustering.
Another normalization gives the Laplace-Beltrami (heat) operator on the
manifold in which the data resides, best suited for the analysis of the
geometry of the dataset, regardless of its possibly non-uniform density.


http://front.math.ucdavis.edu/math.NA/0503445

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3367. TRADING STRATEGY ADIPTED OPTIMIZATION OF EUROPEAN CALL OPTION

Toshio Fukumi

Optimal pricing of European call option is described by linear 
stochastic
differential equation. Trading strategy given by a twin of stochastic 
variables
was integrated w.r.t. Black-Scholes formula to adopt optimal pricing to
tarading strategy.


http://front.math.ucdavis.edu/math.OC/0503444

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3368. CHARACTERIZATION OF ARBITRAGE-FREE MARKETS

Eva Strasser

The present paper deals with the characterization of no-arbitrage 
properties
of a continuous semimartingale. The first main result, Theorem
\refMainTheoremCharNA, extends the no-arbitrage criterion by Levental 
and
Skorohod [Ann. Appl.
   Probab. 5 (1995) 906-925] from diffusion processes to arbitrary 
continuous
semimartingales. The second main result, Theorem 2.4, is a 
characterization of
a weaker notion of no-arbitrage in terms of the existence of 
supermartingale
densities. The pertaining weaker notion of no-arbitrage is equivalent 
to the
absence of immediate arbitrage opportunities, a concept introduced by 
Delbaen
and Schachermayer [Ann. Appl. Probab. 5 (1995) 926-945]. Both results 
are
stated in terms of conditions for any semimartingales starting at 
arbitrary
stopping times \sigma. The necessity parts of both results are known 
for the
stopping time \sigma=0 from Delbaen and Schachermayer [Ann. Appl. 
Probab. 5
(1995) 926-945]. The contribution of the present paper is the proofs of 
the
corresponding sufficiency parts.


http://front.math.ucdavis.edu/math.PR/0503473

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3369. GAUSSIAN LIMITS FOR RANDOM MEASURES IN GEOMETRIC PROBABILITY

Yu. Baryshnikov and J. E. Yukich

We establish Gaussian limits for general measures induced by binomial 
and
Poisson point processes in d-dimensional space. The limiting Gaussian 
field has
a covariance functional which depends on the density of the point 
process. The
general results are used to deduce central limit theorems for measures 
induced
by random graphs (nearest neighbor, Voronoi and sphere of influence 
graph),
random sequential packing models (ballistic deposition and spatial 
birth-growth
models) and statistics of germ-grain models.


http://front.math.ucdavis.edu/math.PR/0503474

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3370. ON THE DISTRIBUTION OF THE MAXIMUM OF A GAUSSIAN FIELD WITH D 
PARAMETERS

Jean-Marc Azais and Mario Wschebor

Let I be a compact d-dimensional manifold, let X:I\to R be a Gaussian 
process
with regular paths and let F_I(u), u\in R, be the probability 
distribution
function of sup_{t\in I}X(t). We prove that under certain regularity and
nondegeneracy conditions, F_I is a C^1-function and satisfies a certain
implicit equation that permits to give bounds for its values and to 
compute its
asymptotic behavior as u\to +\infty. This is a partial extension of 
previous
results by the authors in the case d=1. Our methods use strongly the 
so-called
Rice formulae for the moments of the number of roots of an equation of 
the form
Z(t)=x, where Z:I\to R^d is a random field and x is a fixed point in 
R^d. We
also give proofs for this kind of formulae, which have their own 
interest
beyond the present application.


http://front.math.ucdavis.edu/math.PR/0503475

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3371. HEAVY TRAFFIC ANALYSIS OF OPEN PROCESSING NETWORKS WITH COMPLETE  
RESOURCE POOLING: ASYMPTOTIC OPTIMALITY OF DISCRETE REVIEW POLICIES

Baris Ata and Sunil Kumar

We consider a class of open stochastic processing networks, with 
feedback
routing and overlapping server capabilities, in heavy traffic. The 
networks we
consider satisfy the so-called complete resource pooling condition and
therefore have one-dimensional approximating Brownian control problems.
   We propose a simple discrete review policy for controlling such 
networks.
   Assuming 2+\epsilon moments on the interarrival times and processing 
times,
we provide a conceptually simple proof of asymptotic optimality of the 
proposed
policy.


http://front.math.ucdavis.edu/math.PR/0503477

---------------------------------------------------------------

3372. A CHARACTERIZATION OF THE OPTIMAL RISK-SENSITIVE AVERAGE COST IN 
FINITE  CONTROLLED MARKOV CHAINS

Rolando Cavazos-Cadena and Daniel Hernandez-Hernandez

This work concerns controlled Markov chains with finite state and action
spaces. The transition law satisfies the simultaneous Doeblin 
condition, and
the performance of a control policy is measured by the (long-run)
risk-sensitive average cost criterion associated to a positive, but 
otherwise
arbitrary, risk sensitivity coefficient. Within this context, the 
optimal
risk-sensitive average cost is characterized via a minimization problem 
in a
finite-dimensional Euclidean space.


http://front.math.ucdavis.edu/math.PR/0503478

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3373. LARGE DEVIATIONS OF THE EMPIRICAL VOLUME FRACTION FOR STATIONARY 
POISSON  GRAIN MODELS

Lothar Heinrich

We study the existence of the (thermodynamic) limit of the scaled
cumulant-generating function L_n(z)=|W_n|^{-1}\logE\exp{z|\Xi\cap W_n|} 
of the
empirical volume fraction |\Xi\cap W_n|/|W_n|, where |\cdot| denotes the
d-dimensional Lebesgue measure. Here \Xi=\bigcup_{i\ge1}(\Xi_i+X_i) 
denotes a
d-dimensional Poisson grain model (also known as a Boolean model) 
defined by a
stationary Poisson process \Pi_{\lambda}=\sum_{i\ge1}\delta_{X_i} with
intensity \lambda >0 and a sequence of independent copies 
\Xi_1,\Xi_2,... of a
random compact set \Xi_0. For an increasing family of compact convex 
sets {W_n,
n\ge1} which expand unboundedly in all directions, we prove the 
existence and
analyticity of the limit lim_{n\to\infty}L_n(z) on some disk in the 
complex
plane whenever E\exp{a|\Xi_0|}<\infty for some a>0. Moreover, closely 
connected
with this result, we obtain exponential inequalities and the exact 
asymptotics
for the large deviation probabilities of the empirical volume fraction 
in the
sense of Cram\'er and Chernoff.


http://front.math.ucdavis.edu/math.PR/0503479



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