Regression Coefficients and Autoregressive Order Shrinkage and Selection Via the Lasso

Regression Coefficients and Autoregressive Order Shrinkage and Selection Via the Lasso

Auteur : Hansheng Wang

Date de publication : 2008

Éditeur : SSRN

Nombre de pages : Non disponible

Résumé du livre

Shrinkage and selection. In this article, we extend its application to the REGression model with AutoRegressive errors (REGAR). Two types of lasso estimators are carefully studied. The first is similar to the traditional lasso estimator with only two tuning parameters (one for regression coefficients and the other for autoregression coefficients). These tuning parameters can be easily calculated via a data driven method, but the resulting lasso estimator may not be fully efficient (Fan and Li, 2001). In order to overcome this limitation, we propose a second lasso estimator which uses different tuning parameters for each coefficient. We show that this modified lasso is able to produce the estimator as efficiently as the oracle. Moreover, we propose an algorithm for tuning parameter estimates to obtain the modified lasso estimator. Simulation studies demonstrate that the modified estimator is superior to the traditional one. One empirical example is also presented to illustrate the usefulness of lasso estimators. The extension of lasso to the autoregression with exogenous variables (ARX) model is briefly discussed.

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