Title of article :
Flexible Parsimonious Mixture of Skew Factor Analysis‎ ‎Based‎ ‎on‎ ‎Normal‎ ‎Mean--Variance Birnbaum-Saunders
Author/Authors :
Hashemi ، Farzane ‎Department of Statistics - ‎University of Kashan , Askari ، Jalal ‎Department of Applied Mathematics - ‎University of Kashan , Darijani ، Saeed ‎Farhangian University Of Kerman
From page :
385
To page :
411
Abstract :
The purpose of this paper is to extend the mixture factor analyzers (MFA) model to handle missing and heavy-tailed data. In this model, the distribution of factors loading and errors arise from the multivariate normal mean-variance mixture of the Birnbaum-Saunders (NMVBS) distribution. By using the structures covariance matrix, we introduce parsimonious MFA based on NMVBS distribution. An Expectation Maximization (EM)-type algorithm is developed for parameter estimation. Simulations study and real data sets represent the efficiency and performance of the proposed model.
Keywords :
Normal mean , variance distribution‎ , ‎EM , type algorithm‎ , ‎Factor analysis‎ , ‎Heavy , tail‎ , Strongly leptokurtic‎
Journal title :
Mathematics Interdisciplinary Research
Journal title :
Mathematics Interdisciplinary Research
Record number :
2779423
Link To Document :
بازگشت