Title of article :
Mixture of Extended Birnbaum-Saunders Distributions: An Approach via the Mean-Mixture of Normal Models
Author/Authors :
Mahbudi, S Science and Research Tehran Branch - Islamic Azad University , Jamalizadeh, A Shahid Bahonar University of Kerman , Farnoosh, R Iran University of Science and Technology
Abstract :
The Birnbaum-Saunders (BS) distribution is one of the most con-
sidered right-skewed distributions to model failure times for materials subject
to lifetime data. In this paper, a new extension of the BS model is initially pro-
posed based on the family of mean-mixtures of normal distributions. Then, we
present a new probabilistic mixture model based on the new extended BS dis-
tribution for modeling and clustering right-skewed and heavy-tailed data. The
maximum likelihood (ML) parameter estimates of the model in question are
estimated by employing an expectation-maximization (EM) type algorithm.
Moreover, the empirical information matrix is derived by using an information
based approach. Simulations and real data analysis illustrate the performance
of the proposed methodology.
Keywords :
ECM algorithm , Finite mixture model , Mean-mixtures of normal distributions , Birnbaum-Saunders distribution
Journal title :
Journal of Mathematical Extension(IJME)