Solving Consensus and Semi-supervised Clustering Problems Using Nonnegative Matrix Factorization

Tao Li, C. Ding, Michael I. Jordan
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引用次数: 233

Abstract

Consensus clustering and semi-supervised clustering are important extensions of the standard clustering paradigm. Consensus clustering (also known as aggregation of clustering) can improve clustering robustness, deal with distributed and heterogeneous data sources and make use of multiple clustering criteria. Semi-supervised clustering can integrate various forms of background knowledge into clustering. In this paper, we show how consensus and semi-supervised clustering can be formulated within the framework of nonnegative matrix factorization (NMF). We show that this framework yields NMF-based algorithms that are: (1) extremely simple to implement; (2) provably correct and provably convergent. We conduct a wide range of comparative experiments that demonstrate the effectiveness of this NMF-based approach.
用非负矩阵分解求解一致性和半监督聚类问题
共识聚类和半监督聚类是标准聚类范式的重要扩展。共识聚类(也称为聚类的聚合)可以提高聚类的鲁棒性,处理分布式和异构数据源,并使用多个聚类标准。半监督聚类可以将各种形式的背景知识整合到聚类中。在本文中,我们展示了如何在非负矩阵分解(NMF)的框架内表述一致和半监督聚类。我们表明,该框架产生的基于nmf的算法是:(1)非常容易实现;(2)可证明正确,可证明收敛。我们进行了广泛的比较实验,证明了这种基于nmf的方法的有效性。
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