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New bounded variation based similarity measures between Atanassov intuitionistic fuzzy sets for clustering and pattern recognition

机译:atanassov直觉模糊集聚类和模式识别的新有界变型相似度措施

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摘要

The distance and similarity measures are two interrelated depictions of the patterns which signify the categorization between the Atanassov intuitionistic fuzzy sets (AIFSs) by evaluating the degree of belongingness. In this work, we propose a new similarity measure, termed as hybrid similarity measure, by the combination of intuitionistic fuzzy bounded variation (IFBV) and intuitionistic fuzzy metric based measures. The concept of IFBV which is a technique to approximate arc length of an intuitionistic fuzzy-valued function (IFVF) is also introduced here. The IFVF over an AIFS is geometrically evolved through the generalization of the p-summable IFBV, that is, connecting all the elements of AIFS lie on the structure of IFBV corresponding to power p. The proposed measure overcomes the shortcomings of intuitionistic fuzzy metric based similarity measures by incorporating more flexibility into it. The hybrid similarity measure has been successfully implemented and applied on the several real-world applications in the field of pattern recognition as well as clustering. Further, a detailed comparison of results has been shown against the other existing similarity measures to demonstrate the superiority and validity of the proposed hybrid similarity measure. (C) 2019 Elsevier B.V. All rights reserved.
机译:距离和相似度措施是通过评估归属程度来表示Atanassov直觉模糊集(AIFS)之间的图案的两个相互关联的图案。在这项工作中,我们提出了一种新的相似度,称为混合相似度测量,通过直觉模糊界限变化(IFBV)和直觉模糊公制的措施。此处还介绍了IFBV的概念,其是一种近似于直觉模糊值(IFVF)的弧长的技术。 AIF上的IFVF通过P-SUMBALY IFBV的概括地是几何演化的,即,连接AIF的所有元素位于对应于功率p的IFBV的结构。所提出的措施通过将更大的灵活性纳入其中,克服了基于直觉模糊公制的相似性措施的缺点。混合相似度措施已成功实现并应用于模式识别领域的几个实际应用以及聚类。此外,已经针对其他现有的相似性措施显示了结果的详细比较,以证明所提出的混合相似度措施的优越性和有效性。 (c)2019年Elsevier B.V.保留所有权利。

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