用于无似然推理的弱信息先验和先验数据冲突检查

Pub Date : 2022-02-21 DOI:10.4310/22-sii733
Atlanta Chakraborty, D. Nott, Michael Evans
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引用次数: 2

摘要

无贝叶斯似然推理用于在似然难以处理时进行贝叶斯推理,在科学上有越来越多的重要应用。然而,贝叶斯分析的许多方面在无似然设置中变得更具挑战性。其中一个例子是先验数据冲突检查,目标是评估数据中的信息和先验信息是否不一致。这类冲突的检测很重要,因为它们可能会揭示研究人员对参数的相关值的理解存在问题,并可能导致贝叶斯推断对先验的敏感性。在这里,我们考虑用于先验数据冲突检查的方法,无论可能性是否可处理,这些方法都适用。在构造我们的检验时,我们考虑基于前后Kullback-Leibler分歧的检验统计。使用混合物的后验分布的混合物近似和混合物的Kullback-Leibler发散的闭合形式近似来实现检查,这使得用于校准的参考分布的蒙特卡罗近似在计算上是可行的。当先前的数据发生冲突时,将替代分析中信息较弱的先前规范视为敏感性分析的一部分是有用的。作为我们方法的主要应用,我们开发了一种在无似然推理中搜索弱信息先验的技术,其中使用先验数据冲突检查来形式化弱信息先验概念。通过三个例子说明了这些方法。
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Weakly informative priors and prior-data conflict checking for likelihood-free inference
Bayesian likelihood-free inference, which is used to perform Bayesian inference when the likelihood is intractable, enjoys an increasing number of important scientific applications. However, many aspects of a Bayesian analysis become more challenging in the likelihood-free setting. One example of this is prior-data conflict checking, where the goal is to assess whether the information in the data and the prior are inconsistent. Conflicts of this kind are important to detect, since they may reveal problems in an investigator's understanding of what are relevant values of the parameters, and can result in sensitivity of Bayesian inferences to the prior. Here we consider methods for prior-data conflict checking which are applicable regardless of whether the likelihood is tractable or not. In constructing our checks, we consider checking statistics based on prior-to-posterior Kullback-Leibler divergences. The checks are implemented using mixture approximations to the posterior distribution and closed-form approximations to Kullback-Leibler divergences for mixtures, which make Monte Carlo approximation of reference distributions for calibration computationally feasible. When prior-data conflicts occur, it is useful to consider weakly informative prior specifications in alternative analyses as part of a sensitivity analysis. As a main application of our methodology, we develop a technique for searching for weakly informative priors in likelihood-free inference, where the notion of a weakly informative prior is formalized using prior-data conflict checks. The methods are demonstrated in three examples.
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