Lecture Notes: Selected topics on robust statistical learning theory

08/28/2019
by   Matthieu Lerasle, et al.
0

These notes gather recent results on robust statistical learning theory. The goal is to stress the main principles underlying the construction and theoretical analysis of these estimators rather than provide an exhaustive account on this rapidly growing field. The notes are the basis of lectures given at the conference StatMathAppli 2019.

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