Feb. 14, 2024, 5:43 a.m. | Steve Hanneke Aryeh Kontorovich Guy Kornowski

cs.LG updates on arXiv.org arxiv.org

We study distribution-free nonparametric regression following a notion of average smoothness initiated by Ashlagi et al. (2021), which measures the "effective" smoothness of a function with respect to an arbitrary unknown underlying distribution. While the recent work of Hanneke et al. (2023) established tight uniform convergence bounds for average-smooth functions in the realizable case and provided a computationally efficient realizable learning algorithm, both of these results currently lack analogs in the general agnostic (i.e. noisy) case.
In this work, we …

case convergence cs.lg distribution free function functions math.st notion regression stat.ml stat.th study uniform work

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