A novel clustering algorithm based on a new similarity measure over Intuitionistic fuzzy sets

Rinki Solanki, Q. Lohani, Pranab K. Muhuri
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引用次数: 19

Abstract

In Intuitionistic fuzzy sets(IFSs), experts assign both membership value and non-membership value to each fuzzy element x with a certain degree of hesitation. The hesitancy in the opinion of the experts appear due to incomplete information available regarding x. Therefore, precise estimation of its both membership value and non-membership value becomes highly difficult. Hence, there is a high chance that both membership value and the non-membership value assigned to x by the expert may not be absolutely correct. So, whenever we try to measure similarity between the IFSs using the various distance measures involving all the components of IFSs like membership value, non-membership value together with hesitation, then we often notice that all of them fails to describe the underlying situation completely. Therefore, the similarity measures derived from these distance measures also fails to produce good results. So, we introduce a new similarity measure by properly defining a similarity degree through the result established in this paper. The similarity measure has a central role in developing a modified λ-cutting algorithm for clustering. Here we also establish the efficacy of our modified λ-cutting algorithm while implementing it on a real world data set.
一种基于直觉模糊集相似性测度的聚类算法
在直觉模糊集(ifs)中,专家以一定程度的犹豫为每个模糊元素x分配隶属值和非隶属值。专家意见的犹豫是由于关于x的信息不完整而出现的。因此,精确估计其隶属值和非隶属值变得非常困难。因此,专家分配给x的隶属值和非隶属值很可能不是绝对正确的。因此,每当我们尝试使用各种距离度量来衡量ifs之间的相似性时,这些距离度量涉及ifs的所有组成部分,如隶属度值、非隶属度值和犹豫度,然后我们经常注意到它们都不能完全描述潜在的情况。因此,由这些距离度量得到的相似性度量也不能产生好的结果。因此,我们通过本文建立的结果,通过适当地定义相似度,引入了一种新的相似度量。相似性度量在开发改进的聚类λ切割算法中起着核心作用。在这里,我们还建立了改进的λ-切割算法的有效性,同时在真实世界的数据集上实现了它。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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