Moderate deviation principles for bifurcating Markov chains: case of functions dependent of one variable

IF 0.6 4区 数学 Q4 STATISTICS & PROBABILITY
S. Valère, Bitseki Penda, Gorgui Gackou
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引用次数: 2

Abstract

The main purpose of this article is to establish moderate deviation principles for additive functionals of bifurcating Markov chains. Bifurcating Markov chains are a class of processes which are indexed by a regular binary tree. They can be seen as the models which represent the evolution of a trait along a population where each individual has two offsprings. Unlike the previous results of Bitseki, Djellout \&Guillin (2014), we consider here the case of functions which depend only on one variable. So, mainly inspired by the recent works of Bitseki \&Delmas (2020) about the central limit theorem for general additive functionals of bifurcating Markov chains, we give here a moderate deviation principle for additive functionals of bifurcating Markov chains when the functions depend on one variable. This work is done under the uniform geometric ergodicity and the uniform ergodic property based on the second spectral gap assumptions. The proofs of our results are based on martingale decomposition recently developed by Bitseki \&Delmas (2020) and on results of Dembo (1996), Djellout (2001) and Puhalski (1997).
分叉马尔可夫链的中偏差原理:函数依赖于一个变量的情况
本文的主要目的是建立分叉马尔可夫链的加性泛函的中偏差原理。分叉马尔可夫链是一类由正则二叉树索引的过程。它们可以被视为代表一个性状在种群中进化的模型,每个个体都有两个后代。与Bitseki,Djellout\&Guillin(2014)的先前结果不同,我们在这里考虑仅依赖于一个变量的函数的情况。因此,主要受Bitseki和Delmas(2020)最近关于分叉马尔可夫链的一般加性泛函的中心极限定理的工作的启发,我们给出了当函数依赖于一个变量时,分叉Markov链的加性函数的中偏差原理。这项工作是在基于第二谱隙假设的一致几何遍历性和一致遍历性下完成的。我们的结果的证明是基于Bitseki\&Delmas(2020)最近提出的鞅分解以及Dembo(1996)、Djellout(2001)和Puhalski(1997)的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
48
期刊介绍: ALEA publishes research articles in probability theory, stochastic processes, mathematical statistics, and their applications. It publishes also review articles of subjects which developed considerably in recent years. All articles submitted go through a rigorous refereeing process by peers and are published immediately after accepted. ALEA is an electronic journal of the Latin-american probability and statistical community which provides open access to all of its content and uses only free programs. Authors are allowed to deposit their published article into their institutional repository, freely and with no embargo, as long as they acknowledge the source of the paper. ALEA is affiliated with the Institute of Mathematical Statistics.
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