Journal
SYMMETRY-BASEL
Volume 15, Issue 2, Pages -Publisher
MDPI
DOI: 10.3390/sym15020471
Keywords
multi-criteria decision making; dual hesitant fuzzy linguistic term set; Jaccard similarity measure; Dice similarity measure
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We introduce the dual hesitant fuzzy linguistic term set, which expresses the grade of membership and non-membership using two functions. We identify issues with the existing complement operation and propose a redefinition. Additionally, we propose the concept of information energy and two vector similarity measures for the dual hesitant fuzzy linguistic term set. Finally, we construct a model with unknown weight information based on similarity measures and validate it through an illustrated example.
The dual hesitant fuzzy linguistic term set (DHFLTS) is defined by two functions that express the grade of membership and the grade of non-membership using a set of linguistic terms. In the present work, we first quote an example to point out that the existing complement operation of DHFLTS is on the wrong track. Meanwhile, we redefine this operation to fill the holes in the existing ones. Next, the notion of information energy under a dual hesitant fuzzy linguistic background is provided in order to build the criteria weight determination model. To further facilitate the theory of DHFLTS, we propose two vector similarity measures, i.e., Jaccard and Dice similarity measures, and their weighted forms for DHFLTS. In addition, we pioneer some generalized similarity measures of DHFLTSs and indicate that the Dice similarity measures are particular instances of the generalized similarity measures for some parameter values. Afterward, the similarity measures-based model with unknown weight information under the background of dual hesitant fuzzy linguistic environment is constructed. Lastly, an illustrated example is included to validate the method's application, along with sensitivity analysis and comparative analysis, demonstrating the practicality and validity of its results.
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