Robust finite mixture modeling of multivariate unrestricted skew-normal generalized hyperbolic distributions

Maleki, M; Wraith, D; Arellano-Valle, RB

Keywords: mcmc, skew-normal, bayesian analysis, Finite mixtures, Unrestricted skew-normal generalized hyperbolic family, Generalized hyperbolic distribution

Abstract

In this paper, we introduce an unrestricted skew-normal generalized hyperbolic (SUNGH) distribution for use in finite mixture modeling or clustering problems. The SUNGH is a broad class of flexible distributions that includes various other well-known asymmetric and symmetric families such as the scale mixtures of skew-normal, the skew-normal generalized hyperbolic and its corresponding symmetric versions. The class of distributions provides a much needed unified framework where the choice of the best fitting distribution can proceed quite naturally through either parameter estimation or by placing constraints on specific parameters and assessing through model choice criteria. The class has several desirable properties, including an analytically tractable density and ease of computation for simulation and estimation of parameters. We illustrate the flexibility of the proposed class of distributions in a mixture modeling context using a Bayesian framework and assess the performance using simulated and real data.

Más información

Título según WOS: Robust finite mixture modeling of multivariate unrestricted skew-normal generalized hyperbolic distributions
Título de la Revista: STATISTICS AND COMPUTING
Volumen: 29
Número: 3
Editorial: Springer
Fecha de publicación: 2019
Página de inicio: 415
Página final: 428
Idioma: English
DOI:

10.1007/s11222-018-9815-5

Notas: ISI