Online Asynchronous Distributed Regression

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Publication:6253193

arXiv1407.4373MaRDI QIDQ6253193

Author name not available (Why is that?)

Publication date: 16 July 2014

Abstract: Distributed computing offers a high degree of flexibility to accommodate modern learning constraints and the ever increasing size of datasets involved in massive data issues. Drawing inspiration from the theory of distributed computation models developed in the context of gradient-type optimization algorithms, we present a consensus-based asynchronous distributed approach for nonparametric online regression and analyze some of its asymptotic properties. Substantial numerical evidence involving up to 28 parallel processors is provided on synthetic datasets to assess the excellent performance of our method, both in terms of computation time and prediction accuracy.




Has companion code repository: https://github.com/ryadzenine/dolphin








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