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Relative Deviation Learning Bounds and Generalization with Unbounded Loss Functions

22 October 2013
Corinna Cortes
Spencer Greenberg
M. Mohri
ArXiv (abs)PDFHTML
Abstract

We present an extensive analysis of relative deviation bounds, including detailed proofs of two-sided inequalities and their implications. We also give detailed proofs of two-sided generalization bounds that hold in the general case of unbounded loss functions, under the assumption that a moment of the loss is bounded. These bounds are useful in the analysis of importance weighting and other learning tasks such as unbounded regression.

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