A new family of multivariate heavy-tailed distributions with variable marginal amounts of tailweight: Application to robust clustering


Autoria(s): Forbes, Florence; Wraith, Darren
Data(s)

01/11/2014

Resumo

We propose a family of multivariate heavy-tailed distributions that allow variable marginal amounts of tailweight. The originality comes from introducing multidimensional instead of univariate scale variables for the mixture of scaled Gaussian family of distributions. In contrast to most existing approaches, the derived distributions can account for a variety of shapes and have a simple tractable form with a closed-form probability density function whatever the dimension. We examine a number of properties of these distributions and illustrate them in the particular case of Pearson type VII and t tails. For these latter cases, we provide maximum likelihood estimation of the parameters and illustrate their modelling flexibility on simulated and real data clustering examples.

Identificador

http://eprints.qut.edu.au/92579/

Publicador

Springer

Relação

DOI:10.1007/s11222-013-9414-4

Forbes, Florence & Wraith, Darren (2014) A new family of multivariate heavy-tailed distributions with variable marginal amounts of tailweight: Application to robust clustering. Statistics and Computing, 24(6), pp. 971-984.

Direitos

Copyright 2013 Springer Science+Business Media New York

Fonte

Faculty of Health; School of Public Health & Social Work

Palavras-Chave #Covariance matrix decomposition #EM algorithm #Gaussian scale mixture #Multivariate generalized t -distribution #Outlier detection
Tipo

Journal Article