On the Impact of the Choice of the Prior in Bayesian Statistics

Fatemeh Ghaderinezhad, Christophe Ley
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引用次数: 5

Abstract

A key question in Bayesian analysis is the effect of the prior on the posterior, and how we can measure this effect. Will the posterior distributions derived with distinct priors become very similar if more and more data are gathered? It has been proved formally that, under certain regularity conditions, the impact of the prior is waning as the sample size increases. From a practical viewpoint it is more important to know what happens at finite sample size n. In this chapter, we shall explain how we tackle this crucial question from an innovative approach. To this end, we shall review some notions from probability theory such as the Wasserstein distance and the popular Stein's method, and explain how we use these a priori unrelated concepts in order to measure the impact of priors. Examples will illustrate our findings, including conjugate priors and the Jeffreys prior.
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论贝叶斯统计中先验选择的影响
贝叶斯分析中的一个关键问题是先验对后验的影响,以及我们如何测量这种影响。如果收集的数据越来越多,具有不同先验的后验分布是否会变得非常相似?已经正式证明,在一定的规律性条件下,先验的影响随着样本量的增加而减弱。从实际的角度来看,更重要的是要知道在有限的样本量n下会发生什么。在本章中,我们将解释如何从一种创新的方法来解决这个关键问题。为此,我们将回顾概率论中的一些概念,如Wasserstein距离和流行的Stein方法,并解释我们如何使用这些先验的不相关概念来衡量先验的影响。例子将说明我们的发现,包括共轭先验和杰弗里斯先验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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