论文标题

在标准化之前

On the normalized power prior

论文作者

Carvalho, Luiz Max, Ibrahim, Joseph G.

论文摘要

权力先验是一种基于历史数据构建信息性先前分布的流行工具。该方法包括将可能性提高到折现因素,以控制从历史数据中借来的信息量。习惯性地对折现因子的一系列值进行敏感性分析报告结果。但是,人们经常希望将其分配为先前的分布,并与参数共同估算,这反过来又需要计算归一化常数。在本文中,我们关注的是如何从灵敏度分析中回收计算,以便大约从参数后部和折现因子的关节中进行样本。我们首先显示了归一化常数的一些重要属性,然后使用这些结果来激发以固定的评估预算计算一分配型算法。我们给出了大量插图,并讨论了在封闭形式中已知归一​​化常数的情况,而不是。我们表明,所提出的方法会产生近似后代,当可用的后分布非常接近确切的分布,并且还会产生覆盖数据生成参数的后代,而在棘手的情况下可能具有更高的概率。我们的结果表明,适当包含的归一化常数对于正确量化不确定性至关重要,并且所提出的方法是一种准确且易于实现的技术,可以包括这种归一化,适用于大型模型。 钥匙词:双重扣除;启发;史料;正常化;权力先验;灵敏度分析。

The power prior is a popular tool for constructing informative prior distributions based on historical data. The method consists of raising the likelihood to a discounting factor in order to control the amount of information borrowed from the historical data. It is customary to perform a sensitivity analysis reporting results for a range of values of the discounting factor. However, one often wishes to assign it a prior distribution and estimate it jointly with the parameters, which in turn necessitates the computation of a normalising constant. In this paper we are concerned with how to recycle computations from a sensitivity analysis in order to approximately sample from joint posterior of the parameters and the discounting factor. We first show a few important properties of the normalising constant and then use these results to motivate a bisection-type algorithm for computing it on a fixed budget of evaluations. We give a large array of illustrations and discuss cases where the normalising constant is known in closed-form and where it is not. We show that the proposed method produces approximate posteriors that are very close to the exact distributions when those are available and also produces posteriors that cover the data-generating parameters with higher probability in the intractable case. Our results show that proper inclusion the normalising constant is crucial to the correct quantification of uncertainty and that the proposed method is an accurate and easy to implement technique to include this normalisation, being applicable to a large class of models. Key-words: Doubly-intractable; elicitation; historical data; normalisation; power prior; sensitivity analysis.

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