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Mixtures of Multivariate Power Exponential...
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Mixtures of Multivariate Power Exponential Distributions

Abstract

An expanded family of mixtures of multivariate power exponential distributions is introduced. While fitting heavy-tails and skewness has received much attention in the model-based clustering literature recently, we investigate the use of a distribution that can deal with both varying tail-weight and peakedness of data. A family of parsimonious models is proposed using an eigen-decomposition of the scale matrix. A generalized expectation-maximization algorithm is presented that combines convex optimization via a minorization-maximization approach and optimization based on accelerated line search algorithms on the Stiefel manifold. Lastly, the utility of this family of models is illustrated using both toy and benchmark data.

Authors

Dang UJ; Browne RP; McNicholas PD

Publication date

June 12, 2015

DOI

10.48550/arxiv.1506.04137

Preprint server

arXiv

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