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.