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Risk bounds in linear regression through PAC-Bayesian truncation
Jean-Yves Audibert 1, 2, Olivier Catoni ( ) 3
(03/07/2010)

We consider the problem of predicting as well as the best linear combination of d given functions in least squares regression, and variants of this problem including constraints on the parameters of the linear combination. When the input distribution is known, there already exists an algorithm having an expected excess risk of order d/n, where n is the size of the training data. Without this strong assumption, standard results often contain a multiplicative log n factor, and require some additional assumptions like uniform boundedness of the d-dimensional input representation and exponential moments of the output. This work provides new risk bounds for the ridge estimator and the ordinary least squares estimator, and their variants. It also provides shrinkage procedures with convergence rate d/n (i.e., without the logarithmic factor) in expectation and in deviations, under various assumptions. The key common surprising factor of these results is the absence of exponential moment condition on the output distribution while achieving exponential deviations. All risk bounds are obtained through a PAC-Bayesian analysis on truncated differences of losses. Finally, we show that some of these results are not particular to the least squares loss, but can be generalized to similar strongly convex loss functions.
1 :  IMAGINE
CSTB – Ecole des Ponts ParisTech – Université Paris XII - Paris Est Créteil Val-de-Marne
2 :  WILLOW (INRIA Paris - Rocquencourt)
INRIA – Ecole Normale Supérieure de Paris - ENS Paris – CNRS : UMR8548
3 :  Département de Mathématiques et Applications (DMA)
CNRS : UMR8553 – Ecole Normale Supérieure de Paris - ENS Paris
UMR 8553; UMR 8548
Mathématiques/Statistiques

Statistiques/Théorie
Linear regression – Generalization error – Shrinkage – PAC-Bayesian theorems – Risk bounds – Robust statistics – Resistant estimators – Gibbs posterior distributions – Randomized estimators – Statistical learning theory
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