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On Trivial Solution and Scale Transfer Problems in Graph Regularized NMF

机译:图正则化NMF中的平凡解和尺度转移问题

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Combining graph regularization with nonnegative matrix (tri-)factorization (NMF) has shown great performance improvement compared with traditional nonnegative matrix (tri-)factorization models due to its ability to utilize the geometric structure of the documents and words. In this paper, we show that these models are not well-defined and suffering from trivial solution and scale transfer problems. In order to solve these common problems, we propose two models for graph regularized non-negative matrix (tri-)factorization, which can be applied for document clustering and co-clustering respectively. In the proposed models, a Normalized Cut-like constraint is imposed on the cluster assignment matrix to make the optimization problem well-defined. We derive a multiplicative updating algorithm for the proposed models, and prove its convergence. Experiments of clustering and co-clustering on benchmark text data sets demonstrate that the proposed models outperform the original models as well as many other state-of-the-art clustering methods.
机译:与传统的非负矩阵(tri)分解模型相比,将图正则化与非负矩阵(tri)分解模型相结合已显示出极大的性能提升,这是因为它具有利用文档和单词的几何结构的能力。在本文中,我们表明这些模型的定义不明确,并且存在琐碎的解决方案和规模转移问题。为了解决这些常见问题,我们提出了两种图形正则化非负矩阵(三)分解模型,分别适用于文档聚类和共聚。在所提出的模型中,对集群分配矩阵施加了归一化的类切割约束,以使优化问题得到明确定义。我们为所提出的模型推导了一个乘法更新算法,并证明了其收敛性。在基准文本数据集上进行聚类和共聚的实验表明,所提出的模型优于原始模型以及许多其他最新的聚类方法。

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