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Gamified approach towards optimizing supplier selection through Pythagorean Fuzzy soft-max aggregation operators for healthcare applicationsopen access

Authors
Shahab, SanaAnjum, MohdDutta, Ashit KumarAhmad, Shabir
Issue Date
Mar-2024
Publisher
AMER INST MATHEMATICAL SCIENCES-AIMS
Keywords
soft-max function; aggregation operators; decision-making; Pythagorean fuzzy number
Citation
AIMS MATHEMATICS, v.9, no.3, pp 6738 - 6771
Pages
34
Journal Title
AIMS MATHEMATICS
Volume
9
Number
3
Start Page
6738
End Page
6771
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/90832
DOI
10.3934/math.2024329
ISSN
2473-6988
2473-6988
Abstract
The soft -max function, a well-known extension of the logistic function, has been extensively utilized in numerous stochastic classification m ethodologies, s uch a s l inear differential analysis, soft -max extrapolation, naive Bayes detectors, and neural networks. The focus of this study is the development of soft -max based fuzzy aggregation operators (AOs) for Pythagorean fuzzy sets (PyFS), capitalizing on the benefits provided by the soft -max function. In addition to introducing these novel AOs, we also present a comprehensive approach to multi -attribute decision -making (MADM) that employs the proposed operators. To demonstrate the efficacy and applicability of our MADM method, we applied it to a real -world problem involving Pythagorean fuzzy data. The analysis of supplier selection has been extensively examined in many academic works as a crucial component of supply chain management (SCM), recognised as a significant MADM c hallenge. The process of choosing healthcare suppliers is a pivotal element that has the potential to greatly influence the efficacy and calibre of healthcare provisions. In addition, we given a numerical example to rigorously evaluate the accuracy and dependability of the proposed procedures. This examination demonstrates the effectiveness and potential of our proposed soft -max based AOs and their applicability in Pythagorean fuzzy environments.
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