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Large-Cone Nonnegative Matrix Factorization

机译:大锥非负矩阵分解

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摘要

Nonnegative matrix factorization (NMF) has been greatly popularized by its parts-based interpretation and the effective multiplicative updating rule for searching local solutions. In this paper, we study the problem of how to obtain an attractive local solution for NMF, which not only fits the given training data well but also generalizes well on the unseen test data. Based on the geometric interpretation of NMF, we introduce two large-cone penalties for NMF and propose large-cone NMF (LCNMF) algorithms. Compared with NMF, LCNMF will obtain bases comprising a larger simplicial cone, and therefore has three advantages. 1) the empirical reconstruction error of LCNMF could mostly be smaller; (2) the generalization ability of the proposed algorithm is much more powerful; and (3) the obtained bases of LCNMF have a low-overlapping property, which enables the bases to be sparse and makes the proposed algorithms very robust. Experiments on synthetic and real-world data sets confirm the efficiency of LCNMF.
机译:非负矩阵因式分解(NMF)通过其基于零件的解释和搜索局部解的有效乘性更新规则而得到了广泛普及。在本文中,我们研究了如何为NMF获得有吸引力的本地解决方案的问题,该解决方案不仅很好地拟合了给定的训练数据,而且还很好地概括了看不见的测试数据。基于对NMF的几何解释,我们介绍了NMF的两个大圆锥惩罚,并提出了大圆锥NMF(LCNMF)算法。与NMF相比,LCMNF将获得包含更大的单纯圆锥的碱基,因此具有三个优点。 1)LCNMF的经验重构误差可能较小; (2)所提算法的泛化能力更为强大; (3)所获得的LCNMF的碱基具有低的重叠特性,这使得碱基稀疏并且使得所提出的算法非常健壮。综合和真实数据集的实验证实了LCNMF的效率。

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