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Asymptotic optimal inference for multivariate branching-Markov processes via martingale estimating functions and mixed normality

机译:基于mar估计函数和混合正态性的多元分支马尔可夫过程的渐近最优推断

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摘要

Multivariate tree-indexed Markov processes are discussed with applications. A Galton-Watson super-critical branching process is used to model the random tree-indexed process. Martingale estimating functions are used as a basic framework to discuss asymptotic properties and optimality of estimators and tests. The limit distributions of the estimators turn out to be mixtures of normals rather than normal. Also, the non-null limit distributions of standard test statistics such as Wald, Rao's score, and likelihood ratio statistics are shown to have mixtures of non-central chi-square distributions. The models discussed in this paper belong to the local asymptotic mixed normal family. Consequently, non-standard limit results are obtained.
机译:应用讨论了多元树索引的马尔可夫过程。 Galton-Watson超临界分支过程用于对随机树索引过程进行建模。 ting估计函数用作讨论估计器和检验的渐近性质以及最优性的基本框架。估计量的极限分布证明是法线的混合,而不是法线。同样,标准测试统计数据(例如Wald,Rao得分和似然比统计数据)的非零极限分布显示为具有非中心卡方分布的混合。本文讨论的模型属于局部渐近混合正态族。因此,获得了非标准的极限结果。

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