Given a dictionary of Mn predictors, in a random design regression setting with n observations, we construct estimators that target the best performance among all the linear combinations of the predictors under a sparse lq-norm (0 ≤ q ≤ 1) constraint on the linear coefficients. Besides identifying the optimal rates of convergence, our universal aggregation strategies by model mixing achieve the optimal rates simultaneously over the full range of 0 ≤ q ≤ 1 for any Mn and without knowledge of the lq-norm of the best linear coefficients to represent the regression function. To allow model misspecification, our upper bound results are obtained in a framework of aggregation of estimates. A striking feature is that no specific relationship among the predictors is needed to achieve the upper rates of convergence (hence permitting basically arbitrary correlations between the predictors). Therefore, whatever the true regression function (assumed to be uniformly bounded), our estimators automatically exploit any sparse representation of the regression function (if any), to the best extent possible within the lq-constrained linear combinations for any 0 ≤ q ≤ 1. A sparse approximation result in the lq-hulls turns out to be crucial to adaptively achieve minimax rate optimal aggregation. It precisely characterizes the number of terms needed to achieve a prescribed accuracy of approximation to the best linear combination in an lq-hull for 0 ≤ q ≤ 1. It offers the insight that the minimax rate of lq-aggregation is basically determined by an effective model size, which is a sparsity index that depends on q, Mn, n, and the lq-norm bound in an easily interpretable way based on a classical model selection theory that deals with a large number of models.

Adaptive minimax regression estimation over sparse lq-hulls / Wang, Z.; Paterlini, S.; Gao, F.; Yang, Y.. - In: JOURNAL OF MACHINE LEARNING RESEARCH. - ISSN 1532-4435. - 15:1(2014), pp. 1675-1711.

Adaptive minimax regression estimation over sparse lq-hulls

S. Paterlini;
2014-01-01

Abstract

Given a dictionary of Mn predictors, in a random design regression setting with n observations, we construct estimators that target the best performance among all the linear combinations of the predictors under a sparse lq-norm (0 ≤ q ≤ 1) constraint on the linear coefficients. Besides identifying the optimal rates of convergence, our universal aggregation strategies by model mixing achieve the optimal rates simultaneously over the full range of 0 ≤ q ≤ 1 for any Mn and without knowledge of the lq-norm of the best linear coefficients to represent the regression function. To allow model misspecification, our upper bound results are obtained in a framework of aggregation of estimates. A striking feature is that no specific relationship among the predictors is needed to achieve the upper rates of convergence (hence permitting basically arbitrary correlations between the predictors). Therefore, whatever the true regression function (assumed to be uniformly bounded), our estimators automatically exploit any sparse representation of the regression function (if any), to the best extent possible within the lq-constrained linear combinations for any 0 ≤ q ≤ 1. A sparse approximation result in the lq-hulls turns out to be crucial to adaptively achieve minimax rate optimal aggregation. It precisely characterizes the number of terms needed to achieve a prescribed accuracy of approximation to the best linear combination in an lq-hull for 0 ≤ q ≤ 1. It offers the insight that the minimax rate of lq-aggregation is basically determined by an effective model size, which is a sparsity index that depends on q, Mn, n, and the lq-norm bound in an easily interpretable way based on a classical model selection theory that deals with a large number of models.
2014
1
Wang, Z.; Paterlini, S.; Gao, F.; Yang, Y.
Adaptive minimax regression estimation over sparse lq-hulls / Wang, Z.; Paterlini, S.; Gao, F.; Yang, Y.. - In: JOURNAL OF MACHINE LEARNING RESEARCH. - ISSN 1532-4435. - 15:1(2014), pp. 1675-1711.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/192918
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