ROBUST LINEAR LEAST SQUARES REGRESSION

Citation
Jean-yves Audibert et Olivier Catoni, ROBUST LINEAR LEAST SQUARES REGRESSION, Annals of statistics , 39(5), 2011, pp. 2766-2794
Journal title
ISSN journal
00905364
Volume
39
Issue
5
Year of publication
2011
Pages
2766 - 2794
Database
ACNP
SICI code
Abstract
We consider the problem of robustly 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. For the ridge estimator and the ordinary least squares estimator, and their variants, we provide new risk bounds of order d/n without logarithmic factor unlike some standard results, where n is the size of the training data. We also provide a new estimator with better deviations in the presence of heavy-tailed noise. It is based on truncating differences of losses in a min-max framework and satisfies a d/n risk bound both in expectation and in deviations. 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. Experimental results strongly back up our truncated min-max estimator.