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On independence of Markov kernels and a generalization of two theorems of Basu

机译:马尔可夫核的独立性和Basu两个定理的推广

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Markov kernels play an important role in probability theory and mathematical statistics, conditional distributions being the main example.A Markov kernel can also be viewed as a nontrivial extension of the concepts of σ-field and statistic. For instance, in statistical decision theory, randomized procedures (also named decision rules or, even, strategies) are Markov kernels, while nonrandomized procedures are statistics. It is well known that, in some situations, the optimum procedure is a randomized one: for example, the fundamental lemma of Neyman and Pearson shows how randomization is necessary to obtain a most powerful test.Using such an approach, we extend to Markov kernels well known concepts of probability theory or mathematical statistics, such as independence, ancillarity and completeness. The reader is referred to Heyer (1982) for the corresponding extension of the concept of sufficiency.Among other results, this paper includes: some characterizations of independence of Markov kernels and the stability of independence after the composition with other Markov kernels; two ways of constructing independent Markov kernels; three examples of independence of Markov kernels in Bayesian Theory, Statistical Decision Theory and Testing of Hypotheses; a new source of examples of sufficient Markov kernels; and some results and examples about the stability properties of the extended concepts. Besides, a counterexample is included to exhibit a situation where a property of completeness for statistics cannot be extended to Markov kernels.As a last application of the obtained results on independence, we extend to Markov kernels two celebrated results of Debabrata Basu in mathematical statistics relating independence, sufficiency, ancillarity and completeness.
机译:马尔可夫核在概率论和数理统计中起着重要作用,其中以条件分布为例。马尔可夫核也可以看作是σ场和统计概念的非平凡扩展。例如,在统计决策理论中,随机过程(也称为决策规则或策略)是马尔可夫核,而非随机过程是统计。众所周知,在某些情况下,最佳过程是随机的:例如,内曼(Neyman)和皮尔森(Pearson)的基本引理表明,如何随机化是获得最强大的测试所必需的。使用这种方法,我们扩展到马尔可夫核概率论或数理统计的众所周知的概念,例如独立性,灵巧性和完整性。读者可以从Heyer(1982)的文章中找到充分性概念的相应扩展。除其他结果外,本文还包括:马尔可夫核的独立性的一些特征以及与其他马尔可夫核组合后的独立性的稳定性;构造独立马尔可夫核的两种方法;贝叶斯理论,统计决策理论和假设检验中马尔可夫核独立性的三个例子;足够的马尔可夫核的例子的新来源;以及有关扩展概念的稳定性的一些结果和示例。此外,还包括一个反例,以展示无法将统计完整性的性质扩展到马尔可夫核的情况。作为所得结果在独立性上的最后应用,我们将Debabrata Basu的两个著名的数学统计结果推广到马尔可夫核独立性,充分性,便利性和完整性。

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