2019 JMLR JMLR 2019

An asymptotic analysis of distributed nonparametric methods

Abstract

We investigate and compare the fundamental performance of several distributed learning methods that have been proposed recently. We do this in the context of a distributed version of the classical signal-in-Gaussian-white-noise model, which serves as a benchmark model for studying performance in this setting. The results show how the design and tuning of a distributed method can have great impact on convergence rates and validity of uncertainty quantification. Moreover, we highlight the difficulty of designing nonparametric distributed procedures that automatically adapt to smoothness. [abs] [ pdf ][ bib ] © JMLR 2019. (edit, beta)

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