Spying on the prior of the number of data clusters and the partition distribution in Bayesian cluster analysis

Pub Date : 2022-02-10 DOI:10.1111/anzs.12350
Jan Greve, Bettina Grün, Gertraud Malsiner-Walli, Sylvia Frühwirth-Schnatter
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引用次数: 11

Abstract

Cluster analysis aims at partitioning data into groups or clusters. In applications, it is common to deal with problems where the number of clusters is unknown. Bayesian mixture models employed in such applications usually specify a flexible prior that takes into account the uncertainty with respect to the number of clusters. However, a major empirical challenge involving the use of these models is in the characterisation of the induced prior on the partitions. This work introduces an approach to compute descriptive statistics of the prior on the partitions for three selected Bayesian mixture models developed in the areas of Bayesian finite mixtures and Bayesian nonparametrics. The proposed methodology involves computationally efficient enumeration of the prior on the number of clusters in-sample (termed as ‘data clusters’) and determining the first two prior moments of symmetric additive statistics characterising the partitions. The accompanying reference implementation is made available in the R package fipp. Finally, we illustrate the proposed methodology through comparisons and also discuss the implications for prior elicitation in applications.

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监视贝叶斯聚类分析中数据簇数的先验性和分区分布
聚类分析的目的是将数据划分成组或簇。在应用程序中,通常会处理集群数量未知的问题。在这类应用中使用的贝叶斯混合模型通常指定了一个灵活的先验,该先验考虑了与集群数量有关的不确定性。然而,涉及使用这些模型的主要经验挑战是在分区上诱导先验的表征。这项工作介绍了一种方法来计算在贝叶斯有限混合和贝叶斯非参数领域开发的三个选定贝叶斯混合模型分区上的先验描述性统计。所提出的方法包括对样本内簇(称为“数据簇”)数量的先验进行计算效率枚举,并确定描述分区的对称加性统计的前两个先验矩。附带的参考实现可在R包fipp中获得。最后,我们通过比较说明了所提出的方法,并讨论了在应用程序中对先验启发的影响。
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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