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Optimal Bayesian estimators for latent variable cluster models
Author(s)
Date Issued
2017-10-31
Date Available
2019-05-22T10:23:08Z
Abstract
In cluster analysis interest lies in probabilistically capturing partitions of individuals, items or observations into groups, such that those belonging to the same group share similar attributes or relational profiles. Bayesian posterior samples for the latent allocation variables can be effectively obtained in a wide range of clustering models, including finite mixtures, infinite mixtures, hidden Markov models and block models for networks. However, due to the categorical nature of the clustering variables and the lack of scalable algorithms, summary tools that can interpret such samples are not available. We adopt a Bayesian decision theoretic approach to define an optimality criterion for clusterings, and propose a fast and context-independent greedy algorithm to find the best allocations. One important facet of our approach is that the optimal number of groups is automatically selected, thereby solving the clustering and the model-choice problems at the same time. We consider several loss functions to compare partitions, and show that our approach can accommodate a wide range of cases. Finally, we illustrate our approach on a variety of real-data applications for three different clustering models: Gaussian finite mixtures, stochastic block models and latent block models for networks.
Sponsorship
Science Foundation Ireland
Other Sponsorship
Insight Research Centre
Vienna University of Economics and Business (WU)
Vienna Science and Technology Fund (WWTF)
Type of Material
Journal Article
Publisher
Springer
Journal
Statistics and Computing.
Volume
28
Issue
6
Start Page
1169
End Page
1186
Copyright (Published Version)
2017 the Authors
Language
English
Status of Item
Peer reviewed
ISSN
0960-3174
This item is made available under a Creative Commons License
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insight_publication.pdf
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948.67 KB
Format
Adobe PDF
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