• RecordNumber
    4019
  • Author

    KHALILI, Abbas

  • Crop_Body
    Abbas KHALILI and Jiahua CHEN
  • Title of Article

    Variable selec‎tion in Finite Mixture of Regression Models

  • Title Of Journal
    American Statistical Association
  • PublishInfo
    Journal of the American Statistical Association
  • Publication Year
    2007
  • Volum
    102
  • Issue Number
    479
  • Page
    1025-1038
  • Keywords
    EM algorithm , LASSO , Mixture model , Penalty method , SCAD
  • Abstract
    In the applications of finite mixture of regression (FMR) models, often many covariates are used, and their contributions to the response variable vary from one component to another of the mixture model. This creates a complex variable selection problem. Existing methods, such as the Akaike information criterion and the Bayes information criterion, are computationally expensive as the number of covariates and components in the mixture model increases. In this article we introduce a penalized likelihood approach for variable selection in FMR models. The new method introduces penalties that depend on the size of the regression coefficients and the mixture structure. The new method is shown to be consistent for variable selection. A data-adaptive method for selecting tuning parameters and an EM algorithm for efficient numerical computations are developed. Simulations show that the method performs very well and requires much less computing power than existing methods. The new method is illustrated by analyzing two real data sets.