Complex & Intelligent Systems (Jul 2024)

Negation of permutation mass function in random permutation sets theory for uncertain information modeling

  • Yongchuan Tang,
  • Rongfei Li,
  • He Guan,
  • Deyun Zhou,
  • Yubo Huang

DOI
https://doi.org/10.1007/s40747-024-01569-y
Journal volume & issue
Vol. 10, no. 6
pp. 7697 – 7709

Abstract

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Abstract Negation provides a novel perspective for the representation of information. However, current research seldom addresses the issue of negation within the random permutation set theory. Based on the concept of belief reassignment, this paper proposes a method for obtaining the negation of permutation mass function in the of random set theory. The convergence of proposed negation is verified, the trends of uncertainty and dissimilarity after each negation operation are investigated. Furthermore, this paper introduces a negation-based uncertainty measure, and designs a multi-source information fusion approach based on the proposed measure. Numerical examples are used to verify the rationality of proposed method.

Keywords