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On the Convergence of Multiplicative Update Algorithms for Nonnegative Matrix Factorization

机译:非负矩阵分解的乘性更新算法的收敛性

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摘要

Nonnegative matrix factorization (NMF) is useful to find basis information of nonnegative data. Currently, multiplicative updates are a simple and popular way to find the factorization. However, for the common NMF approach of minimizing the Euclidean distance between approximate and true values, no proof has shown that multiplicative updates converge to a stationary point of the NMF optimization problem. Stationarity is important as it is a necessary condition of a local minimum. This paper discusses the difficulty of proving the convergence. We propose slight modifications of existing updates and prove their convergence. Techniques invented in this paper may be applied to prove the convergence for other bound-constrained optimization problems.
机译:非负矩阵分解(NMF)可用于查找非负数据的基本信息。当前,乘法更新是找到因式分解的简单且流行的方法。但是,对于最小化近似值和真实值之间的欧几里德距离的常见NMF方法,没有证据表明乘法更新收敛到NMF优化问题的平稳点。平稳性很重要,因为它是局部最小值的必要条件。本文讨论了证明收敛性的困难。我们建议对现有更新进行一些修改,并证明其收敛性。本文发明的技术可用于证明其他约束约束优化问题的收敛性。

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