分散非凸低秩矩阵恢复

IF 13.7
Junzhuo Gao;Heng Lian
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引用次数: 0

摘要

对于低秩矩阵恢复问题,直接操作低秩矩阵的算法通常需要计算矩阵的顶部奇异值/向量,因此计算成本很高。矩阵分解是一种计算效率高的低秩矩阵恢复的非凸方法,利用交替最小化或梯度下降算法,近年来对其理论性质进行了研究。然而,当数据分布在多个节点上时,基于分解的矩阵恢复问题在分散设置下的行为仍然是未知的。本文考虑了分布式梯度下降算法,并建立了它在逼近误差范围内的(局部)线性收敛性。数值结果说明了该算法在一般网络上的收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralized Nonconvex Low-rank Matrix Recovery
For the low-rank matrix recovery problem, algorithms that directly manipulate the low-rank matrix typically require computing the top singular values/vectors of the matrix and thus are computationally expensive. Matrix factorization is a computationally efficient nonconvex approach for low-rank matrix recovery, utilizing an alternating minimization or a gradient descent algorithm, and its theoretical properties have been investigated in recent years. However, the behavior of the factorization-based matrix recovery problem in the decentralized setting is still unknown when data are distributed on multiple nodes. In this paper, we consider the distributed gradient descent algorithm and establish its (local) linear convergence up to the approximation error. Numerical results are also presented to illustrate the convergence of the algorithm over a general network.
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