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SymNMF: nonnegative low-rank approximation of a similarity matrix for graph clustering

机译:SymNMF:用于图聚类的相似度矩阵的非负低秩近似

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Nonnegative matrix factorization (NMF) provides a lower rank approximation of a matrix by a product of two nonnegative factors. NMF has been shown to produce clustering results that are often superior to those by other methods such as K-means. In this paper, we provide further interpretation of NMF as a clustering method and study an extended formulation for graph clustering called Symmetric NMF (SymNMF). In contrast to NMF that takes a data matrix as an input, SymNMF takes a nonnegative similarity matrix as an input, and a symmetric nonnegative lower rank approximation is computed. We show that SymNMF is related to spectral clustering, justify SymNMF as a general graph clustering method, and discuss the strengths and shortcomings of SymNMF and spectral clustering. We propose two optimization algorithms for SymNMF and discuss their convergence properties and computational efficiencies. Our experiments on document clustering, image clustering, and image segmentation support SymNMF as a graph clustering method that captures latent linear and nonlinear relationships in the data.
机译:非负矩阵分解(NMF)通过两个非负因子的乘积提供矩阵的较低秩近似。已经证明NMF产生的聚类结果通常优于其他方法(例如K均值)。在本文中,我们将对NMF作为聚类方法提供进一步的解释,并研究一种称为对称NMF(SymNMF)的图聚类扩展公式。与将数据矩阵作为输入的NMF相比,SymNMF将非负相似性矩阵作为输入,并计算出对称非负下秩近似。我们证明了SymNMF与频谱聚类有关,证明了SymNMF作为一种通用的图聚类方法,并讨论了SymNMF和频谱聚类的优缺点。我们为SymNMF提出了两种优化算法,并讨论了它们的收敛特性和计算效率。我们在文档聚类,图像聚类和图像分割方面的实验支持SymNMF作为一种图形聚类方法,可捕获数据中潜在的线性和非线性关系。

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