基于特征聚类加权的柔性模糊共聚类

William-Chandra Tjhi, Lihui Chen
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引用次数: 5

摘要

模糊共聚类是一种对目标和特征同时进行模糊聚类的无监督聚类技术。在本文中,我们提出了一种新的灵活的模糊协同聚类算法,该算法在公式中加入了特征聚类权重。我们称之为带有特征簇加权的柔性模糊共聚类(FFCFW)。所谓灵活,是指算法允许对象簇的数量与特征簇的数量不同。这项工作背后有两个动机。首先,在模糊框架下,许多共聚类算法仍然要求对象聚类的数量与特征聚类的数量相同。尽管在实际应用中很难找到这种刚性结构。第二个动机是,虽然已经有许多灵活的共聚类尝试,但在这种方案中,对象和特征聚类之间的关系通常没有清楚地表示。因此,我们为FFCFW生成的每个目标簇合并了一个特征簇加权方案,以便两种类型的簇之间的关系在特征簇权重中得到体现。这使得新算法能够生成更准确的模糊共聚类表示。FFCFW是将两种现有算法的核心部分融合在一起而形成的。与之前的算法一样,FFCFW采用迭代优化过程。我们详细讨论了该算法的推导过程,以及它相对于其他现有工作的优点。在多个大型基准文档数据集上的实验表明了该算法的可行性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flexible Fuzzy Co-clustering with Feature-cluster Weighting
Fuzzy co-clustering is an unsupervised technique that performs simultaneous fuzzy clustering of objects and features. In this paper, we propose a new flexible fuzzy co-clustering algorithm which incorporates feature-cluster weighting in the formulation. We call it Flexible Fuzzy Co-clustering with Feature-cluster Weighting (FFCFW). By flexible we mean the algorithm allows the number of object clusters to be different from the number of feature clusters. There are two motivations behind this work. First, in the fuzzy framework, many co-clustering algorithms still require the number of object clusters to be the same as the number of feature clusters. This is despite the fact that such rigid structure is hardly found in real-world applications. The second motivation is that while there have been numerous attempts for flexible co-clustering, it is common that in such scheme the relationships between object and feature clusters are not clearly represented. For this reason we incorporate a feature-cluster weighting scheme for each object cluster generated by FFCFW so that the relationships between the two types of clusters are manifested in the feature-cluster weights. This enables the new algorithm to generate more accurate representation of fuzzy co-clusters. FFCFW is formulated by fusing together the core components of two existing algorithms. Like its predecessors, FFCFW adopts an iterative optimization procedure. We discuss in details the derivation of the proposed algorithm and the advantages it has over other existing works. Experiments on several large benchmark document datasets reveal the feasibility of our proposed algorithm
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