106 research outputs found
Q-Markov random probability measures and their posterior distributions
In this paper, we use the Markov property introduced in Balan and Ivanoff (J.
Theor. Probab. 15, 2002, 553-588) for set-indexed processes and we prove that a
Markov prior distribution leads to a Markov posterior distribution. In
particular, by proving that a neutral to the right prior distribution leads to
a neutral to the right posterior distribution, we extend a fundamental result
of Doksum (Ann. Probab. 2,1974, 183-201) to arbitrary sample spaces.Comment: 22 page
A strong invariance principle for associated random fields
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.Comment: Published at http://dx.doi.org/10.1214/009117904000001071 in the
Annals of Probability (http://www.imstat.org/aop/) by the Institute of
Mathematical Statistics (http://www.imstat.org
Linear SPDEs with harmonizable noise
Using tools from the theory of random fields with stationary increments, we
introduce a new class of processes which can be used as a model for the noise
perturbing an SPDE. This type of noise (called harmonizable) is not necessarily
Gaussian, but it includes the spatially homogeneous Gaussian noise introduced
in Dalang (1999), and the fractional noise considered in Balan and Tudor
(2010). We derive some general conditions for the existence of a random field
solution of a linear SPDE with harmonizable noise, under some mild conditions
imposed on the Green function of the differential operator which appears in
this equation. This methodology is applied to the study of the heat and wave
equations (possibly replacing the Laplacian by one of its fractional powers),
extending in this manner the results of Balan and Tudor (2010) to the case
.Comment: 31 page
Self-Normalized Weak Invariance Principle for Mixing Sequences
In this article we give a necessary and su±cient condition for a selfnormalized weak invariance principle, in the case of a strictly stationary Á-mixing sequence fXjgj¸1. This is obtained under the assumptions that the function L(x) = EX2 1 1fjX1·xg is slowly varying at 1 and the mixing coe±cients satisfy Á1=2(n)Self-normalized, weak invariance principle, mixing sequences.
The Stochastic Heat Equation Driven by a Gaussian Noise: germ Markov Property
Let be the process
solution of the stochastic heat equation
driven by a Gaussian noise , which is white in time and has spatial
covariance induced by the kernel . In this paper we prove that the process
is locally germ Markov, if is the Bessel kernel of order \alpha=2k,k
\in \bN_{+}, or is the Riesz kernel of order \alpha=4k,k \in \bN_{+}.Comment: 20 page
A Cluster Limit Theorem for Infinitely Divisible Point Processes
In this article, we consider a sequence of point
processes, whose points lie in a subset of \bR \verb2\2 \{0\}, and
satisfy an asymptotic independence condition. Our main result gives some
necessary and sufficient conditions for the convergence in distribution of
to an infinitely divisible point process . As
applications, we discuss the exceedance processes and point processes based on
regularly varying sequences
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