Distributed robust regression with correntropy losses and regularization kernel networks

Ting Hu, Renjie Guo
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Abstract

Distributed learning has attracted considerable attention in recent years due to its power to deal with big data in various science and engineering problems. Based on a divide-and-conquer strategy, this paper studies the distributed robust regression algorithm associated with correntropy losses and coefficient regularization in the scheme of kernel networks, where the kernel functions are not required to be symmetric or positive semi-definite. We establish explicit convergence results of such distributed algorithm depending on the number of data partitions, robustness and regularization parameters. We show that with suitable parameter choices the distributed robust algorithm can obtain the optimal convergence rate in the minimax sense, and simultaneously reduce the computational complexity and memory requirement in the standard (non-distributed) algorithms.
带有熵损失和正则化核网络的分布式稳健回归
近年来,分布式学习因其在各种科学和工程问题中处理大数据的能力而备受关注。本文基于分而治之的策略,研究了核网络方案中与熵损失和系数正则化相关的分布式鲁棒回归算法,其中核函数不要求对称或正半有限。我们根据数据分区的数量、鲁棒性和正则化参数,建立了这种分布式算法的明确收敛结果。我们证明,在参数选择合适的情况下,分布式鲁棒算法可以获得最小值意义上的最优收敛率,同时降低标准(非分布式)算法的计算复杂度和内存需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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