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Bipolar fuzzy attribute implications

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Abstract

Recently, bipolar fuzzy concept lattice has received much attention among the research communities. In this process, a problem was addressed while dealing with a large number of bipolar fuzzy concepts. In this case, bipolar fuzzy attribute implications can be helpful for multi-decision process based on user-required chosen attributes. To achieve this goal, the current paper focuses on introducing a method for bipolar fuzzy attribute implications and its measurement using accuracy function with an illustrative example.

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Acknowledgements

The author thanks anonymous reviewers who asked questions on my previous work which motivated me to do this work.

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Correspondence to Prem Kumar Singh.

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Singh, P.K. Bipolar fuzzy attribute implications. Quantum Mach. Intell. 4, 4 (2022). https://doi.org/10.1007/s42484-021-00060-y

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