分布式网络中非负矩阵的稀疏因子分解

Xinhong Meng, Fusheng Xu, Hailiang Ye, Feilong Cao
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摘要

本文提出了一些求解大规模非负矩阵稀疏因子分解的分布式算法。这些分布式算法结合了经典非负矩阵分解算法和分布式学习网络的一些优点。我们提出的算法利用网络的整个节点来解决非负矩阵的因子分解问题;事实上,每个节点处理矩阵的一部分,然后使用分布式平均一致性(DAC)算法或区域节点来传达每个节点获得的参数,以确保它们收敛或易于计算。不同于现有的NMF分布式学习算法,它们总是需要高质量的硬件或复杂的计算方法,我们的算法充分利用了传统NMF算法的简单性和分布式思想。使用一些人工数据集对这些算法进行了测试,实验结果与比较表明,所提出的算法在准确性和效率方面表现良好。
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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The sparse factorization of nonnegative matrix in distributed network

This paper proposes some distributed algorithms to solve the sparse factorization of a large-scale nonnegative matrix (SFNM). These distributed algorithms combine some merits of classical nonnegative matrix factorization (NMF) algorithms and distributed learning network. Our proposed algorithms utilize the whole nodes of network to solve a factorization problem of a nonnegative matrix; the fact is that per node copes with a part of the matrix, then uses the distributed average consensus (DAC) algorithm or regional nodes to communicate the parameters gained by each node to ensure them to be convergent or easy to calculation. Different from other existing distributed learning algorithms of NMF, which always need high-qualified hardware or complicated computing methods, our algorithms make a full use of the simplicity of traditional NMF algorithms and distributed thoughts. Some artificial datasets are used for testing these algorithms, and the experimental results with comparisons show that the proposed algorithms perform favorably in terms of accuracy and efficiency.

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