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Categorical fuzzy k-modes clustering with automated feature weight learning

机译:具有自动特征权重学习的分类模糊k模式聚类

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This article presents and investigates a new variant of the fuzzy k-Modes clustering algorithm for categorical data with automated feature weight learning. The modification strengthens the classical fuzzy k-Modes algorithm by associating higher weights to features which are instrumental in recognizing the clustering pattern of the data. A statistical comparison between the performances of the proposed algorithm and the conventional fuzzy k-Modes algorithm on synthetic and real world datasets, have been carried out with respect to mean values, best performance count, and medians. We take a novel approach towards the comparison of the fuzziness of the obtained clusters. To the best of our knowledge, such comparison has been reported here for the first time for the case of categorical data. The results obtained, shows that the proposed algorithm enjoys an edge over the conventional fuzzy k-Modes algorithm both in terms of Rand Index and fuzziness measures. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文介绍并研究了具有自动特征权重学习的分类数据的模糊k-Modes聚类算法的新变种。该修改通过将较高的权重与有助于识别数据聚类模式的特征相关联,从而增强了经典的模糊k-Modes算法。对于平均值,最佳性能计数和中位数,已经对合成和现实数据集上的拟议算法和常规模糊k-Modes算法的性能进行了统计比较。我们采用一种新颖的方法来比较所获得簇的模糊性。据我们所知,这里是首次针对分类数据进行这种比较的报道。所得结果表明,该算法在兰德指数和模糊度方面都比传统的模糊k-Modes算法具有优势。 (C)2015 Elsevier B.V.保留所有权利。

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