后验概率:非单调性、渐近速率、对数凹性和Turán不等式

IF 1.5 2区 数学 Q2 STATISTICS & PROBABILITY
Bernoulli Pub Date : 2022-05-01 DOI:10.3150/21-BEJ1398
S. Hart, Y. Rinott
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引用次数: 0

摘要

在标准贝叶斯框架中,假设数据是由参数空间$\theta$中由$\theta$参数化的分布生成的,在该参数空间上给出了先验分布$\pi$。贝叶斯统计学家通过给定观测数据的后验概率来量化真实参数为$\theta$中的$\theta_{0}$的信念。我们研究了当数据在某个参数$\theta_{1}下生成时,$\theton_{0}$中的后验信念的行为,该参数可能与$\ttheta_{0}相同,也可能不同。$从随机阶,特别是似然比优势开始,当数据顺序到达时,我们考虑后验概率的单调性特性作为样本大小的函数。虽然当数据在相同的$\theta_{0}$下生成时,$\theta{0}$后验是单调递增的(即,它是一个子映射),但当数据在不同的$\theata_{1}$下产生时,它一般不需要单调递减,甚至不需要就其总体期望而言单调递减。$事实上,它可能会多次上下波动,即使是在像iid扔硬币这样的简单情况下。当数据来自广泛的指数分布族时,我们获得了精确的渐近速率;这些比率特别意味着在$\teta{1}\neq\teta{0}$下$\teta{0}$-后验的期望最终是严格递减的。最后,我们证明了在许多有趣的情况下,这种期望是样本大小的对数凹函数,因此是单峰的。在伯努利情形中,我们通过发展一个与Tur有关的不等式来获得这一点{a}n勒让德多项式的不等式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Posterior probabilities: Nonmonotonicity, asymptotic rates, log-concavity, and Turán’s inequality
In the standard Bayesian framework data are assumed to be generated by a distribution parametrized by $\theta$ in a parameter space $\Theta$, over which a prior distribution $\pi$ is given. A Bayesian statistician quantifies the belief that the true parameter is $\theta_{0}$ in $\Theta$ by its posterior probability given the observed data. We investigate the behavior of the posterior belief in $\theta_{0}$ when the data are generated under some parameter $\theta_{1},$ which may or may not be the same as $\theta_{0}.$ Starting from stochastic orders, specifically, likelihood ratio dominance, that obtain for resulting distributions of posteriors, we consider monotonicity properties of the posterior probabilities as a function of the sample size when data arrive sequentially. While the $\theta_{0}$-posterior is monotonically increasing (i.e., it is a submartingale) when the data are generated under that same $\theta_{0}$, it need not be monotonically decreasing in general, not even in terms of its overall expectation, when the data are generated under a different $\theta_{1}.$ In fact, it may keep going up and down many times, even in simple cases such as iid coin tosses. We obtain precise asymptotic rates when the data come from the wide class of exponential families of distributions; these rates imply in particular that the expectation of the $\theta_{0}$-posterior under $\theta_{1}\neq\theta_{0}$ is eventually strictly decreasing. Finally, we show that in a number of interesting cases this expectation is a log-concave function of the sample size, and thus unimodal. In the Bernoulli case we obtain this by developing an inequality that is related to Tur\'{a}n's inequality for Legendre polynomials.
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来源期刊
Bernoulli
Bernoulli 数学-统计学与概率论
CiteScore
3.40
自引率
0.00%
发文量
116
审稿时长
6-12 weeks
期刊介绍: BERNOULLI is the journal of the Bernoulli Society for Mathematical Statistics and Probability, issued four times per year. The journal provides a comprehensive account of important developments in the fields of statistics and probability, offering an international forum for both theoretical and applied work. BERNOULLI will publish: Papers containing original and significant research contributions: with background, mathematical derivation and discussion of the results in suitable detail and, where appropriate, with discussion of interesting applications in relation to the methodology proposed. Papers of the following two types will also be considered for publication, provided they are judged to enhance the dissemination of research: Review papers which provide an integrated critical survey of some area of probability and statistics and discuss important recent developments. Scholarly written papers on some historical significant aspect of statistics and probability.
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