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Additive model selection
Authors:Umberto Amato  Anestis Antoniadis  Italia De Feis
Affiliation:1.Istituto per le Applicazioni del Calcolo ‘M. Picone’,National Research Council,Naples,Italy;2.Laboratoire Jean Kuntzmann,Université Joseph Fourier,Grenoble Cedex 09,France;3.Department of Statistical Sciences,University of Cape Town,Rondebosch, Cape Town,South Africa
Abstract:We study sparse high dimensional additive model fitting via penalization with sparsity-smoothness penalties. We review several existing algorithms that have been developed for this problem in the recent literature, highlighting the connections between them, and present some computationally efficient algorithms for fitting such models. Furthermore, using reasonable assumptions and exploiting recent results on group LASSO-like procedures, we take advantage of several oracle results which yield asymptotic optimality of estimators for high-dimensional but sparse additive models. Finally, variable selection procedures are compared with some high-dimensional testing procedures available in the literature for testing the presence of additive components.
Keywords:
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