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A novel intuitionistic fuzzy similarity measure with applications in decision-making, pattern recognition, and clustering problems

机译:一种新的直觉模糊相似度度量在决策、模式识别和聚类问题中的应用

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摘要

Abstract The distance and similarity measures are two interrelated information measures that can be effectively used to quantify the degree of deviation and degree of similarity between the pairs of objects. Among several interesting measures on intuitionistic fuzzy sets, the similarity measure is a fundamental and prominent tool for handling the imperfect and ambiguous information. The researchers have suggested several similarity measures, but some of them produce conflicting results in practical significance and violate the basic axioms of similarity. In this communication, we propose a novel similarity measure and visualize it, we also discuss the axioms of similarity and non-linearity property from graphical perspective. The characteristics of the suggested measure are demonstrated with the help of various numerical experiments and it is analyzed that the developed measure can overcome the unreasonable cases of the existing measures. We also discuss the effectiveness of the suggested measure over various existing measures in context of linguistic hedges. An algorithm for pattern recognition based on the proposed measure is developed and demonstrated with numerical experiments that stated measure suppresses the limitations of prevailing measures. Further, the efficiency of the suggested measure is examined in clustering analysis by matching the objects on the different confidence levels. Finally, a new decision-making algorithm based on the suggested measure is developed and a comparative study with existing approach is performed to establish its validity.
机译:摘要 距离度量和相似度是两种相互关联的信息度量,可以有效地量化物体对之间的偏差程度和相似度。在关于直觉模糊集的几个有趣的度量中,相似性度量是处理不完美和模糊信息的一个基本和突出的工具。研究人员提出了几种相似性度量,但其中一些在实际意义上产生了相互矛盾的结果,并违反了相似性的基本公理。在这次交流中,我们提出了一种新的相似性度量并将其可视化,我们还从图形的角度讨论了相似性和非线性性质的公理。借助各种数值实验,验证了所提出措施的特点,并分析了所提出的措施可以克服现有措施的不合理情况。我们还讨论了在语言对冲的背景下,建议的措施相对于各种现有措施的有效性。开发了一种基于所提措施的模式识别算法,并通过数值实验进行了验证,表明所述措施抑制了现行措施的局限性。此外,在聚类分析中,通过匹配不同置信水平上的对象来检查所建议度量的效率。最后,基于所提出的度量提出了一种新的决策算法,并与现有方法进行了对比研究,以确定其有效性。

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