Dunson David B
Department of Statistical Science, Box 90251, Duke University, Durham, North Carolina 27708, U.S.A.
Biometrika. 2009;96(2):249-262. doi: 10.1093/biomet/asp021.
This paper focuses on the problem of choosing a prior for an unknown random effects distribution within a Bayesian hierarchical model. The goal is to obtain a sparse representation by allowing a combination of global and local borrowing of information. A local partition process prior is proposed, which induces dependent local clustering. Subjects can be clustered together for a subset of their parameters, and one learns about similarities between subjects increasingly as parameters are added. Some basic properties are described, including simple two-parameter expressions for marginal and conditional clustering probabilities. A slice sampler is developed which bypasses the need to approximate the countably infinite random measure in performing posterior computation. The methods are illustrated using simulation examples, and an application to hormone trajectory data.
本文聚焦于在贝叶斯分层模型中为未知随机效应分布选择先验的问题。目标是通过允许全局和局部信息借用的组合来获得稀疏表示。提出了一种局部划分过程先验,它会诱导相关的局部聚类。对于参数的一个子集,个体可以被聚类在一起,并且随着参数的增加,人们对个体之间的相似性了解得越来越多。描述了一些基本性质,包括用于边际和条件聚类概率的简单双参数表达式。开发了一种切片采样器,它在进行后验计算时无需近似可数无限随机测度。通过模拟示例以及对激素轨迹数据的应用来说明这些方法。