Information measures for <i>q</i> ‐rung orthopair fuzzy sets 论文

2019International Journal of Intelligent Systems引用 224
Multi-Criteria Decision MakingFuzzy Logic and Control SystemsRough Sets and Fuzzy Logic

摘要

The q-rung orthopair fuzzy set (q-ROFS), originally developed by Yager, is more capable than that of Pythagorean fuzzy set to deal uncertainty in real life. The main goal of this paper is to investigate the relationship between the distance measure, the similarity measure, the entropy, and the inclusion measure for q-ROFSs. The primary purpose of the study is to develop the systematic transformation of information measures (distance measure, similarity measure, entropy, and inclusion measure) for q-ROFSs. For obtaining this goal, some new formulae for information measures of q-ROFSs are presented. To show the validity of the explored similarity measure, we apply it to pattern recognition, clustering analysis, and medical diagnosis. Some illustrative examples are given to support the findings, and also demonstrate their practicality and availability of similarity measure between q-ROFSs.

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