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Fast Nonnegative Matrix Factorization Algorithms Using Projected Gradient Approaches for Large-Scale Problems

机译:求解大型问题的基于投影梯度法的快速非负矩阵分解算法

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摘要

Recently, a considerable growth of interest in projected gradient (PG) methods has been observed due to their high efficiency in solving large-scale convex minimization problems subject to linear constraints. Since the minimization problems underlying nonnegative matrix factorization (NMF) of large matrices well matches this class of minimization problems, we investigate and test some recent PG methods in the context of their applicability to NMF. In particular, the paper focuses on the following modified methods: projected Landweber, Barzilai-Borwein gradient projection, projected sequential subspace optimization (PSESOP), interior-point Newton (IPN), and sequential coordinate-wise. The proposed and implemented NMF PG algorithms are compared with respect to their performance in terms of signal-to-interference ratio (SIR) and elapsed time, using a simple benchmark of mixed partially dependent nonnegative signals.
机译:近年来,由于在解决受线性约束的大规模凸极小化问题方面的高效率,人们已经注意到对投影梯度(PG)方法的兴趣显着增长。由于大型矩阵的非负矩阵分解(NMF)背后的最小化问题与此类最小化问题很好地匹配,因此,我们在适用于NMF的背景下研究和测试了一些最新的PG方法。特别是,本文重点关注以下修改方法:投影Landweber,Barzilai-Borwein梯度投影,投影顺序子空间优化(PSESOP),内点牛顿(IPN)和顺序坐标方式。使用混合的部分相关的非负信号的简单基准,比较了提出和实施的NMF PG算法的性能,包括信噪比(SIR)和经过时间。

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