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Fuzzifying Clustering Algorithms: The Case Study of MajorClust

机译:模糊聚类算法:MajorClust的案例研究

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摘要

Among various document clustering algorithms that have been proposed so far, the most useful are those that automatically reveal the number of clusters and assign each target document to exactly one cluster. However, in many real situations, there not exists an exact boundary between different clusters. In this work, we introduce a fuzzy version of the MajorClust algorithm. The proposed clustering method assigns documents to more than one category by taking into account a membership function for both, edges and nodes of the corresponding underlying graph. Thus, the clustering problem is formulated in terms of weighted fuzzy graphs. The fuzzy approach permits to decrease some negative effects which appear in clustering of large-sized corpora with noisy data.
机译:到目前为止,已提出的各种文档聚类算法中,最有用的是自动显示聚类数量并将每个目标文档分配给一个聚类的算法。但是,在许多实际情况下,不同群集之间不存在确切的边界。在这项工作中,我们介绍了MajorClust算法的模糊版本。所提出的聚类方法通过考虑相应基础图的边和节点的隶属度函数,将文档分配给多个类别。因此,根据加权模糊图来表达聚类问题。模糊方法可以减少在带有噪声数据的大型语料库聚类中出现的一些负面影响。

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