Open Access
December 2011 Bayesian Outlier Detection with Dirichlet Process Mixtures
Matthew S. Shotwell, Elizabeth H. Slate
Bayesian Anal. 6(4): 665-690 (December 2011). DOI: 10.1214/11-BA625

Abstract

We introduce a Bayesian inference mechanism for outlier detection using the augmented Dirichlet process mixture. Outliers are detected by forming a maximum a posteriori (MAP) estimate of the data partition. Observations that comprise small or singleton clusters in the estimated partition are considered outliers. We offer a novel interpretation of the Dirichlet process precision parameter, and demonstrate its utility in outlier detection problems. The precision parameter is used to form an outlier detection criterion based on the Bayes factor for an outlier partition versus a class of partitions with fewer or no outliers. We further introduce a computational method for MAP estimation that is free of posterior sampling, and guaranteed to find a MAP estimate in finite time. The novel methods are compared with several established strategies in a yeast microarray time series.

Citation

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Matthew S. Shotwell. Elizabeth H. Slate. "Bayesian Outlier Detection with Dirichlet Process Mixtures." Bayesian Anal. 6 (4) 665 - 690, December 2011. https://doi.org/10.1214/11-BA625

Information

Published: December 2011
First available in Project Euclid: 13 June 2012

zbMATH: 1330.62153
MathSciNet: MR2869961
Digital Object Identifier: 10.1214/11-BA625

Keywords: Bayes factor , optimization , Partition

Rights: Copyright © 2011 International Society for Bayesian Analysis

Vol.6 • No. 4 • December 2011
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