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Slope heuristics and V-Fold model selection in heteroscedastic regression using strongly localized bases

21 May 2015
F. Navarro
Adrien Saumard
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Abstract

We investigate the optimality for model selection of the so-called slope heuristics, VVV-fold cross-validation and VVV-fold penalization in a heteroscedastic with random design regression context. We consider a new class of linear models that we call strongly localized bases and that generalize histograms, piecewise polynomials and compactly supported wavelets. We derive sharp oracle inequalities that prove the asymptotic optimality of the slope heuristics---when the optimal penalty shape is known---and VVV -fold penalization. Furthermore, VVV-fold cross-validation seems to be suboptimal for a fixed value of VVV since it recovers asymptotically the oracle learned from a sample size equal to 1−V−11-V^{-1}1−V−1 of the original amount of data. Our results are based on genuine concentration inequalities for the true and empirical excess risks that are of independent interest. We show in our experiments the good behavior of the slope heuristics for the selection of linear wavelet models. Furthermore, VVV-fold cross-validation and VVV-fold penalization have comparable efficiency.

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