| Article ID | Journal | Published Year | Pages | File Type | 
|---|---|---|---|---|
| 5129242 | Journal of the Korean Statistical Society | 2017 | 10 Pages | 
Abstract
												This paper presents a new extension of nonlinear regression models constructed by assuming the normal mean-variance mixture of Birnbaum-Saunders distribution for the unobserved error terms. A computationally analytical EM-type algorithm is developed for computing maximum likelihood estimates. The observed information matrix is derived for obtaining the asymptotic standard errors of parameter estimates. The practical utility of the methodology is illustrated through both simulated and real data sets.
Related Topics
												
													Physical Sciences and Engineering
													Mathematics
													Statistics and Probability
												
											Authors
												Mehrdad Naderi, Alireza Arabpour, Tsung-I Lin, Ahad Jamalizadeh, 
											