An efficient similarity measure for intuitionistic fuzzy sets |
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Authors: | B. Farhadinia |
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Affiliation: | 1. Department of Mathemetics, Quchan Institute of Engineering and Technology, Quchan, Iran
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Abstract: | We introduce a new methodology for measuring the degree of similarity between two intuitionistic fuzzy sets. The new method is developed on the basis of a distance defined on an interval by the use of convex combination of endpoints and also focusing on the property of min and max operators. It is shown that among the existing methods, the proposed method meets all the well-known properties of a similarity measure and has no counter-intuitive examples. The validity and applicability of the proposed similarity measure is illustrated with two examples known as pattern recognition and medical diagnosis. |
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