Sobolev Norm Learning Rates for Regularized Least-Squares Algorithm

23 Feb 2017Simon FischerIngo Steinwart

Learning rates for least-squares regression are typically expressed in terms of $L_2$-norms. In this paper we extend these rates to norms stronger than the $L_2$-norm without requiring the regression function to be contained in the hypothesis space... (read more)

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