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Flexible Clustering for High-Dimensional Data via Mixtures of Joint Generalized Hyperbolic Models

Abstract

A mixture of joint generalized hyperbolic distributions (MJGHD) is introduced for asymmetric clustering for high-dimensional data. The MJGHD approach takes into account the cluster-specific subspace, thereby limiting the number of parameters to estimate while also facilitating visualization of results. Identifiability is discussed, and a multi-cycle ECM algorithm is outlined for parameter estimation. The MJGHD approach is illustrated on two real data sets, where the Bayesian information criterion is used for model selection.

Authors

Tang Y; Browne RP; McNicholas PD

Publication date

May 8, 2017

DOI

10.48550/arxiv.1705.03130

Preprint server

arXiv
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