Fairness-Aware Performance Evaluation for Multi-Party Multi-Objective Optimization
Zifan Zhao, Peilan Xu, Wenjian Luo

TL;DR
This paper introduces a fairness-aware evaluation framework for multiparty multiobjective optimization that considers consensus and fairness, addressing limitations of traditional mean-based metrics and narrow solution concepts.
Contribution
It develops a generalized, fairness-aware evaluation method based on cooperative game theory and consensus solutions, extending classical metrics and solution concepts.
Findings
The framework satisfies four fairness axioms.
It distinguishes algorithms based on consensus fairness.
Algorithms covering acceptable regions are evaluated favorably.
Abstract
In multiparty multiobjective optimization problems, solution sets are usually evaluated using classical performance metrics, aggregated across DMs. However, such mean-based evaluations may be unfair by favoring certain parties, as they assume identical geometric approximation quality to each party's PF carries comparable evaluative significance. Moreover, prevailing notions of MPMOP optimal solutions are restricted to strictly common Pareto optimal solutions, representing a narrow form of cooperation in multiparty decision making scenarios. These limitations obscure whether a solution set reflects balanced relative gains or meaningful consensus among heterogeneous DMs. To address these issues, this paper develops a fairness-aware performance evaluation framework grounded in a generalized notion of consensus solutions. From a cooperative game-theoretic perspective, we formalize four…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Reinforcement Learning in Robotics · Risk and Portfolio Optimization
