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Invariant Procedures for Model Checking, Checking for Prior-Data Conflict and Bayesian Inference.

机译:用于模型检查,检查先验数据冲突和贝叶斯推断的不变过程。

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摘要

We consider a statistical theory as being invariant when the results of two statisticians' independent data analyses, based upon the same statistical theory and using effectively the same statistical ingredients, are the same. We discuss three aspects of invariant statistical theories.;Second, Bayesians developed many noninformative priors that are supposed to contain no information concerning the true parameter value. Any of these are data dependent or improper which can lead to a variety of difficulties. Gelman (2006) introduced the notion of the weak informativity as a comprimise between informative and noninformative priors without a precise definition. We give a precise definition of weak informativity using a measure of prior-data conflict that assesses whether or not a prior places its mass around the parameter values having relatively high likelihood. In particular, we say a prior pi 2 is weakly informative relative to another prior pi1 whenever pi 2 leads to fewer prior-data conflicts a priori than pi1. This leads to a precise quantitative measure of how much less informative a weakly informative prior is.;In Bayesian data analysis, highest posterior density inference is a commonly used method. This approach is not invariant to the choice of dominating measure or reparametrizations. We explore properties of relative surprise inferences suggested by Evans (1997). Relative surprise inferences which compare the belief changes from a priori to a posteriori are invariant under reparametrizations. We mainly focus on the connection of relative surprise inferences to classical Bayesian decision theory as well as important optimalities.;Both model checking and checking for prior-data conflict are assessments of single null hypothesis without any specific alternative hypothesis. Hence, we conduct these assessments using a measure of surprise based on a discrepancy statistic. For the discrete case, it is natural to use the probability of obtaining a data point that is less probable than the observed data. For the continuous case, the natural analog of this is not invariant under equivalent choices of discrepancies. A new method is developed to obtain an invariant assessment. This approach also allows several discrepancies to be combined into one discrepancy via a single P-value.
机译:当两个统计学家的独立数据分析的结果基于相同的统计理论并有效地使用相同的统计成分时,我们认为统计理论是不变的。我们讨论了不变统计理论的三个方面。第二,贝叶斯理论发展了许多非信息先验,这些先验应该不包含有关真实参数值的信息。这些中的任何一个都依赖于数据或不正确,这可能导致各种困难。盖尔曼(Gelman(2006))引入了弱信息性的概念,即信息性先验和非信息性先验之间的折衷,没有精确的定义。我们使用先验数据冲突的一种度量来精确定义弱信息,该评估会评估先验是否将其质量置于可能性相对较高的参数值周围。特别地,我们说,每当pi 2导致比pi1更少的先验数据冲突时,先验pi 2相对于另一个先验pi1的信息性就较弱。这导致精确定量度量弱信息先验的信息量少。在贝叶斯数据分析中,最高后验密度推断是一种常用方法。这种方法对于主导措施或重新设定参数的选择不是不变的。我们探讨了埃文斯(1997)提出的相对惊奇推断的性质。在重新配置下,比较从先验到后验的信念变化的相对惊讶推断是不变的。我们主要关注相对惊喜推理与经典贝叶斯决策理论的联系以及重要的最优性。模型检查和先验数据冲突检查都是对单个无效假设的评估,而没有任何特定的替代假设。因此,我们使用基于差异统计量的突击措施进行评估。对于离散情况,很自然地使用获得比观察数据更不可能的数据点的概率。对于连续的情况,在等价的差异选择下,其自然类似物不是不变的。开发了一种新方法以获得不变评估。这种方法还允许通过单个P值将几个差异合并为一个差异。

著录项

  • 作者

    Jang, Gun Ho.;

  • 作者单位

    University of Toronto (Canada).;

  • 授予单位 University of Toronto (Canada).;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 185 p.
  • 总页数 185
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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