Authors
Yiyun Zhang, Runze Li, Chih-Ling Tsai
Publication date
2010/3/1
Journal
Journal of the American statistical Association
Volume
105
Issue
489
Pages
312-323
Publisher
Taylor & Francis
Description
We apply the nonconcave penalized likelihood approach to obtain variable selections as well as shrinkage estimators. This approach relies heavily on the choice of regularization parameter, which controls the model complexity. In this paper, we propose employing the generalized information criterion, encompassing the commonly used Akaike information criterion (AIC) and Bayesian information criterion (BIC), for selecting the regularization parameter. Our proposal makes a connection between the classical variable selection criteria and the regularization parameter selections for the nonconcave penalized likelihood approaches. We show that the BIC-type selector enables identification of the true model consistently, and the resulting estimator possesses the oracle property in the terminology of Fan and Li (2001). In contrast, however, the AIC-type selector tends to overfit with positive probability. We further show …
Total citations
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Scholar articles
Y Zhang, R Li, CL Tsai - Journal of the American statistical Association, 2010