A dynamic distance measure of picture fuzzy sets and its application

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Abstract

Picture fuzzy sets, which are the extension of intuitionistic fuzzy sets, can deal with inconsistent information better in practical applications. A distance measure is an important mathematical tool to calculate the difference degree between picture fuzzy sets. Although some distance measures of picture fuzzy sets have been constructed, there are some unreasonable and counterintuitive cases. The main reason is that the existing distance measures do not or seldom consider the refusal degree of picture fuzzy sets. In order to solve these unreasonable and counterintuitive cases, in this paper, we propose a dynamic distance measure of picture fuzzy sets based on a picture fuzzy point operator. Through a numerical comparison and multi-criteria decision-making problems, we show that the proposed distance measure is reasonable and effective.

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CITATION STYLE

APA

Zhao, R., Luo, M., & Li, S. (2021). A dynamic distance measure of picture fuzzy sets and its application. Symmetry, 13(3), 1–18. https://doi.org/10.3390/sym13030436

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