首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >ASYMPTOTIC FREQUENTIST COVERAGE PROPERTIES OF BAYESIAN CREDIBLE SETS FOR SIEVE PRIORS
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ASYMPTOTIC FREQUENTIST COVERAGE PROPERTIES OF BAYESIAN CREDIBLE SETS FOR SIEVE PRIORS

机译:腹股镜贝叶斯可信套装的渐近频率覆盖物业

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摘要

We investigate the frequentist coverage properties of (certain) Bayesian credible sets in a general, adaptive, nonparametric framework. It is well known that the construction of adaptive and honest confidence sets is not possible in general. To overcome this problem (in context of sieve type of priors), we introduce an extra assumption on the functional parameters, the so-called "general polished tail" condition. We then show that under standard assumptions, both the hierarchical and empirical Bayes methods, result in honest confidence sets for sieve type of priors in general settings and we characterize their size. We apply the derived abstract results to various examples, including the nonparametric regression model, density estimation using exponential families of priors, density estimation using histogram priors and the nonparametric classification model, for which we show that their size is near minimax adaptive with respect to the considered specific pseudometrics.
机译:我们调查一般,自适应,非参数框架中(某些)贝叶斯可信集的频繁覆盖物业。 众所周知,通常不可能建设自适应和诚实的信心集。 为了克服这个问题(在筛子类型的上下文中),我们在功能参数上引入额外的假设,所谓的“一般抛光尾”条件。 然后,我们展示了在标准假设下,分层和经验贝叶斯方法都导致普通环境中的筛子类型的态度良好的信心集,我们表征了尺寸。 我们将衍生的抽象结果应用于各种示例,包括非参数回归模型,使用指数族的子系列的密度估计,使用直方图的前导者和非参数分类模型,我们认为它们的尺寸与相对于的最低限度 被认为是特定的pseudometrics。

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