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Clustering Methods Using Distance-Based Similarity Measures of Single-Valued Neutrosophic Sets

机译:使用基于距离的单值中智集的相似性度量的聚类方法

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Clustering plays an important role in data mining, pattern recognition, and machine learning. Single-valued neutrosophic sets (SVNSs) are useful means to describe and handle indeterminate and inconsistent information that fuzzy sets and intuitionistic fuzzy sets cannot describe and deal with. To cluster the data represented by single-valued neutrosophic information, this article proposes single-valued neutrosophic clustering methods based on similarity measures between SVNSs. First, we define a generalized distance measure between SVNSs and propose two distance-based similarity measures of SVNSs. Then, we present a clustering algorithm based on the similarity measures of SVNSs to cluster single-valued neutrosophic data. Finally, an illustrative example is given to demonstrate the application and effectiveness of the developed clustering methods.
机译:集群在数据挖掘,模式识别和机器学习中起着重要作用。单值中智集(SVNS)是描述和处理模糊集和直觉模糊集无法描述和处理的不确定和不一致信息的有用手段。为了聚类单值中智信息所代表的数据,本文提出了基于SVNS之间相似性度量的单值中智聚类方法。首先,我们定义了SVNS之间的广义距离度量,并提出了两种基于距离的SVNS相似性度量。然后,我们提出了一种基于SVNS相似性度量的聚类算法,以聚类单值中智数据。最后,给出一个说明性的例子来说明所开发的聚类方法的应用和有效性。

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