Generalized Logarithmic Divergence Measure for Intuitionistic Fuzzy Matrix

Authors

DOI:

https://doi.org/10.26713/cma.v14i2.2211

Keywords:

Intuitionistic fuzzy matrix, Mathematical operation, Generalized divergence measure, Decision-making problem

Abstract

For solving multi-criterion decision making problems, we in this paper propose a parametric generalized logarithmic divergence measure for intuitionistic fuzzy matrices. The validity of a symmetric divergence measure has been established for the proposed measure. Also, the properties (compliment, transitivity, concavity and symmetricity) of this measure for intuitionistic fuzzy matrices are studied. Application of the proposed measure has been illustrated through a decision-making problem in trade market.

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Published

18-09-2023
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How to Cite

Malik, S. C., Raj, M., & Thakur, R. (2023). Generalized Logarithmic Divergence Measure for Intuitionistic Fuzzy Matrix. Communications in Mathematics and Applications, 14(2), 575–590. https://doi.org/10.26713/cma.v14i2.2211

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Research Article