An alternative multivariate exponential power distribution
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University of Cape Coast
Abstract
In the existing multivariate Exponential Power Distribution (MEPD), the shape
parameter has the tendency to affect the variability in the data leading to distorted
features of the distribution. “This study resolves this problem by obtaining
a generalized expression in place of the constant coefficient (0.5) of the
quadratic form of the Multivariate EPD as a function of the shape parameter,
such that the variance-covariance matrix of the data is exactly equal to the scale
parameter. The alternative Multivariate EPD (AMEPD) thus obtained is a more
generalized multivariate EPD. The maximum likelihood estimation (MLE) of
the parameters of the distribution are presented via Newton-Ralphson method.
The estimates based on the proposed distribution is compared to other methods
using information criteria.” Results consistently indicate superior performance
of the AMEPD to the MEPD for various sample sizes based on both simulated
and empirical datasets. The study further explores the application of the new distribution
in discriminant analysis under the assumptions of equal and unequal
variance-covariance matrices. The application also underscores the importance
of accurate specification of the variance-covariance matrix for the desired predictive
performance. The proposed approach has the potential to provide a more
robust statistical model for complex multivariate distributions that are close to
symmetry as it provides greater flexibility in depicting the true underlying characteristics
of the distributions.
Description
xiv,286p:,ill
