Kernel-Based k-Representatives Algorithm for Fuzzy Clustering of Categorical Data

Toan Nguyen Mau, V. Huynh
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引用次数: 3

Abstract

Fuzzy cluster analysis plays an essential role in addressing unclear boundaries between clusters in data and aims to group objects into fuzzy clusters based on their similarities. In this paper, we propose a new method for fuzzy clustering of data with categorical attributes. Specifically, we first introduce a method for kernel-based representation of cluster centers in which the underlying distribution of categorical values within a cluster center is estimated as a weighted sum of the uniform distribution and their frequency distribution. We then extend the k-centers clustering method by applying this newly proposed method of cluster center presentation for fuzzy clustering of categorical data. The effectiveness and efficiency of the proposed method are demonstrated by conducting experiments on 16 realworld datasets and comparing the results with those of existing methods. In addition, our research can be regarded as the first attempt to apply a fuzzy silhouette scoring method that includes internal coherence and external separation of fuzzy clusters into clustering of categorical data.
分类数据模糊聚类的k-代表核算法
模糊聚类分析在解决数据中聚类之间界限不清的问题上起着至关重要的作用,其目的是根据对象的相似度将其划分为模糊的聚类。本文提出了一种对具有分类属性的数据进行模糊聚类的新方法。具体来说,我们首先介绍了一种基于核的聚类中心表示方法,该方法将聚类中心内分类值的潜在分布估计为均匀分布及其频率分布的加权和。然后,我们将这种新的聚类中心表示方法应用于分类数据的模糊聚类,扩展了k中心聚类方法。通过在16个真实数据集上的实验,并与现有方法的结果进行了比较,验证了该方法的有效性和高效性。此外,我们的研究可以看作是首次尝试将模糊聚类的内部相干性和外部分离性相结合的模糊轮廓评分方法应用于分类数据的聚类。
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