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Tuning Parameter Estimation in Penalized Least Squares Methodology
Authors:E Androulakis  K Mylona
Institution:1. Department of Mathematics , National Technical University of Athens , Athens , Greece;2. Faculty of Applied Economics , Universiteit Antwerpen , Antwerpen , Belgium
Abstract:The efficiency of the penalized methods (Fan and Li, 2001 Fan , J. , Li , R. ( 2001 ). Variable selection via nonconcave penalized likelihood and its oracle properties . Journal of the American Statistical Association 96 : 13481360 .Taylor & Francis Online], Web of Science ®] Google Scholar]) depends strongly on a tuning parameter due to the fact that it controls the extent of penalization. Therefore, it is important to select it appropriately. In general, tuning parameters are chosen by data-driven approaches, such as the commonly used generalized cross validation. In this article, we propose an alternative method for the derivation of the tuning parameter selector in penalized least squares framework, which can lead to an ameliorated estimate. Simulation studies are presented to support theoretical findings and a comparison of the Type I and Type II error rates, considering the L 1, the hard thresholding and the Smoothly Clipped Absolute Deviation penalty functions, is performed. The results are given in tables and discussion follows.
Keywords:Error estimation  Generalized cross validation  Penalized least squares  Tuning parameter
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