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Multivalued type proximity measure and concept of mutual similarity value useful for clustering symbolic patterns

机译:多值类型接近度度量和互相似值的概念可用于对符号模式进行聚类

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摘要

In this paper, a novel similarity measure for estimating the degree of similarity between two patterns (described by interval type data) is proposed. The proposed measure computes the degree of similarity between two patterns and approximates the computed similarity value by a multivalued type data. Unlike conventional proximity matrices, the proximity matrix obtained through the application of the proposed similarity measure is not necessarily symmetric. Based on this unconventional similarity matrix a modified agglomerative method by introducing the concept of mutual similarity value (MSV) for clustering symbolic patterns is also presented. Experiments on various data sets have been conducted in order to study the efficacy of the proposed methodology.
机译:在本文中,提出了一种新颖的相似性度量,用于估计两个模式之间的相似度(由间隔类型数据描述)。所提出的措施计算两个模式之间的相似度,并通过多值类型数据近似计算出的相似度值。与常规的接近矩阵不同,通过应用所提出的相似性度量获得的接近矩阵不一定是对称的。在此非常规相似性矩阵的基础上,还提出了一种通过引入互相似值(MSV)来对符号模式进行聚类的改进的凝聚方法。为了研究所提出方法的有效性,已经在各种数据集上进行了实验。

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