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Improvement of Jarvis-Patrick Clustering Based on Fuzzy Similarity

机译:基于模糊相似度的Jarvis-Patrick聚类的改进

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Different clustering algorithms are based on different similarity or distance measures (e.g. Euclidian distance, Minkowsky distance, Jackard coefficient, etc.). Jarvis-Patrick clustering method utilizes the number of the common neighbors of the k-nearest neighbors of objects to disclose the clusters. The main drawback of this algorithm is that its parameters determine a too crisp cutting criterion, hence it is difficult to determine a good parameter set. In this paper we give an extension of the similarity measure of the Jarvis-Patrick algorithm. This extension is carried out in the following two ways: (ⅰ) fuzzyfication of one of the parameters, and (ⅱ) spreading of the scope of the other parameter. The suggested fuzzy similarity measure can be applied in various forms, in different clustering and visualization techniques (e.g. hierarchical clustering, MDS, VAT). In this paper we give some application examples to illustrate the efficiency of the use of the proposed fuzzy similarity measure in clustering. These examples show that the proposed fuzzy similarity measure based clustering techniques are able to detect clusters with different sizes, shapes and densities. It is also shown that the outliers are also detectable by the proposed measure.
机译:不同的聚类算法是基于不同的相似性或距离度量(例如,欧几里得距离,明科夫斯基距离,Jackard系数等)。 Jarvis-Patrick聚类方法利用对象的k个最近邻居的公共邻居数来揭示聚类。该算法的主要缺点是其参数确定了过于清晰的切割标准,因此很难确定好的参数集。在本文中,我们给出了Jarvis-Patrick算法的相似性度量的扩展。该扩展通过以下两种方式进行:(ⅰ)参数之一的模糊化,以及(ⅱ)扩展另一个参数范围的。所建议的模糊相似性度量可以以各种形式,以不同的聚类和可视化技术(例如层次聚类,MDS,VAT)应用。在本文中,我们提供一些应用示例,以说明在聚类中使用拟议的模糊相似性度量的效率。这些示例表明,所提出的基于模糊相似性度量的聚类技术能够检测具有不同大小,形状和密度的聚类。还表明通过所提出的措施也可以检测到异常值。

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