Title of article :
Ridge Shrinkage Estimators in Finite Mixture of Generalized Estimating Equations.
Author/Authors :
Nezamdoust ، Sajad Department of Statistics - Faculty of Mathematical Sciences and Computer - Allameh TabatabaiUniversity , Eskandari ، Farzad Department of Statistics - Faculty of Statistics, Mathematics and Computer - Allameh Tabatabai University
From page :
91
To page :
106
Abstract :
The paper considers the problem of estimation of the parameters in  nite mixture models.In this article, a new method is proposed for of estimation of the parameters in  nite mixture models. Traditionally, the parameter estimation in  nite mixture models is performed from a likelihood point of view by exploiting the expectation maximization (EM) method and the Least Square Principle. Ridge regression is an alternative to the ordinary least squares method when multicollinearity presents among the regressor variables in multiple linear regression analysis. Accordingly, we propose a new shrinkage ridge estimation approach. Based on this principle, we propose an iterative algorithm called RidgeIterative Weighted least Square (RIWLS) to estimate the parameters. Monte-Carlo simulation studies are conducted to appraise the performance of our method. The results show that the Proposed estimator perform better than the IWLS method.
Keywords :
Finite Mixture Model , Least Square Principle , Iterative Weighted Least Square , Ridge Estimation
Journal title :
Journal of Mathematics and Modeling in Finance
Journal title :
Journal of Mathematics and Modeling in Finance
Record number :
2741809
Link To Document :
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