Title of article :
LASSO and shrinkage estimation in Weibull censored regression models
Author/Authors :
Ahmed، نويسنده , , S. Ejaz and Hossain، نويسنده , , Shakhawat and Doksum، نويسنده , , Kjell A.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
In this paper we address the problem of estimating a vector of regression parameters in the Weibull censored regression model. Our main objective is to provide natural adaptive estimators that significantly improve upon the classical procedures in the situation where some of the predictors may or may not be associated with the response. In the context of two competing Weibull censored regression models (full model and candidate submodel), we consider an adaptive shrinkage estimation strategy that shrinks the full model maximum likelihood estimate in the direction of the submodel maximum likelihood estimate. We develop the properties of these estimators using the notion of asymptotic distributional risk. The shrinkage estimators are shown to have higher efficiency than the classical estimators for a wide class of models. Further, we consider a LASSO type estimation strategy and compare the relative performance with the shrinkage estimators. Monte Carlo simulations reveal that when the true model is close to the candidate submodel, the shrinkage strategy performs better than the LASSO strategy when, and only when, there are many inactive predictors in the model. Shrinkage and LASSO strategies are applied to a real data set from Veteranʹs administration (VA) lung cancer study to illustrate the usefulness of the procedures in practice.
Keywords :
Stein Estimation , Asymptotic distributional risk , Candidate subspace , Lasso , Weibull censored regression , Adaptive shrinkage estimators
Journal title :
Journal of Statistical Planning and Inference
Journal title :
Journal of Statistical Planning and Inference