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Choosing the number of clusters in a finite mixture model using an exact integrated completed likelihood criterion
Author(s)
Date Issued
2015-08
Date Available
2017-04-18T14:31:51Z
Abstract
The integrated completed likelihood (ICL) criterion has proven to be a very popular approach in model-based clustering through automatically choosing the number of clusters in a mixture model. This approach effectively maximises the complete data likelihood, thereby including the allocation of observations to clusters in the model selection criterion. However for practical implementation one needs to introduce an approximation in order to estimate the ICL. Our contribution here is to illustrate that through the use of conjugate priors one can derive an exact expression for ICL and so avoiding any approximation. Moreover, we illustrate how one can find both the number of clusters and the best allocation of observations in one algorithmic framework. The performance of our algorithm is presented on several simulated and real examples.
Sponsorship
Science Foundation Ireland
Type of Material
Journal Article
Publisher
Springer
Journal
Metron
Volume
73
Issue
2
Start Page
177
End Page
199
Copyright (Published Version)
2015 Sapienza Università di Roma
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
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insight_publication.pdf
Size
436.76 KB
Format
Adobe PDF
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80b3698198d1f00fef04912513bdd04b
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