Title : ( A theoretical framework for Landsat data modeling based on the matrix variate mean-mixture of normal model )
Authors: M. Naderi , A. Bekker , Mohammad Arashi , A. Jamalizadeh ,Access to full-text not allowed by authors
Abstract
This paper introduces a new family of matrix variate distributions based on the mean-mixture of normal (MMN) models. The properties of the new matrix variate family, namely stochastic representation, moments and characteristic function, linear and quadratic forms as well as marginal and conditional distributions are investigated. Three special cases including the restricted skew-normal, exponentiated MMN and the mixed-Weibull MMN matrix variate distributions are presented and studied. Based on the specific presentation of the proposed model, an EM-type algorithm can be directly implemented for obtaining maximum likelihood estimate of the parameters. The usefulness and practical utility of the proposed methodology are illustrated through two conducted simulation studies and through the Landsat satellite dataset analysis.
Keywords
matrix variate family; stochastic representation@article{paperid:1081336,
author = {M. Naderi and A. Bekker and Arashi, Mohammad and A. Jamalizadeh},
title = {A theoretical framework for Landsat data modeling based on the matrix variate mean-mixture of normal model},
journal = {PLOS One},
year = {2020},
volume = {15},
number = {4},
month = {April},
issn = {1932-6203},
keywords = {matrix variate family; stochastic representation},
}
%0 Journal Article
%T A theoretical framework for Landsat data modeling based on the matrix variate mean-mixture of normal model
%A M. Naderi
%A A. Bekker
%A Arashi, Mohammad
%A A. Jamalizadeh
%J PLOS One
%@ 1932-6203
%D 2020