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A Chi-square Distance-based Similarity Measure of Single-valued Neutrosophic Set and Applications

机译:单值中智集基于卡方距离的相似性度量及其应用

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The aim of this paper is to propose a new similarity measure of singlevalued neutrosophic sets (SVNSs). The idea of the construction of the new similarity measure comes from Chi-square distance measure, which is an important measure in the applications of image analysis and statistical inference. Numerical examples are provided to show the superiority of the proposed similarity measure comparing with the existing similarity measures of SVNSs. A weighted similarity is also put forward based on the proposed similarity. Some examples are given to show the effectiveness and practicality of the proposed similarity in pattern recognition, medical diagnosis and multi-attribute decision making problems under single-valued neutrosophic environment.
机译:本文的目的是提出一种新的单值中智集(SVNSs)的相似性度量。新的相似性度量的构造思想来自卡方距离度量,这是图像分析和统计推断应用中的重要度量。数值算例表明了所提出的相似性度量与SVNS现有相似性度量相比的优越性。基于提出的相似度,还提出了加权相似度。给出了一些例子来说明所提出的相似性在单值中智环境下的模式识别,医学诊断和多属性决策问题中的有效性和实用性。

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