D numbers theory based game-theoretic framework in adversarial decision making under fuzzy environment
Xinyang Deng, Wen Jiang

TL;DR
This paper introduces a novel game-theoretic framework combining fuzzy set theory and D numbers theory to address adversarial decision making under uncertainty, enhancing evaluation modeling and conflict resolution.
Contribution
It develops a comprehensive framework integrating fuzzy evaluations, DNT non-exclusiveness, and game theory for adversarial decisions in fuzzy environments, advancing uncertainty reasoning methods.
Findings
Effective framework for adversarial decision making under fuzzy conditions
Improves DNT as a generalization of Dempster-Shafer theory
Demonstrates applicability through an illustrative example
Abstract
Adversarial decision making is a particular type of decision making problem where the gain a decision maker obtains as a result of his decisions is affected by the actions taken by others. Representation of alternatives' evaluations and methods to find the optimal alternative are two important aspects in the adversarial decision making. The aim of this study is to develop a general framework for solving the adversarial decision making issue under uncertain environment. By combining fuzzy set theory, game theory and D numbers theory (DNT), a DNT based game-theoretic framework for adversarial decision making under fuzzy environment is presented. Within the proposed framework or model, fuzzy set theory is used to model the uncertain evaluations of decision makers to alternatives, the non-exclusiveness among fuzzy evaluations are taken into consideration by using DNT, and the conflict of…
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Taxonomy
TopicsMulti-Criteria Decision Making · Fuzzy Systems and Optimization · Infrastructure Resilience and Vulnerability Analysis
