GTAIAug 19, 2025

A Mechanism for Mutual Fairness in Cooperative Games with Replicable Resources -- Extended Version

arXiv:2508.13960v1h-index: 15
Originality Incremental advance
AI Analysis

This addresses fairness issues in cooperative AI systems for researchers and practitioners, though it is incremental as it builds on cooperative game theory with new axioms for replicability.

The paper tackles the problem of ensuring fair reward distribution in cooperative AI systems with replicable resources, such as collaborative learning, by proposing a new mechanism that guarantees mutual fairness through the Balanced Reciprocity Axiom.

The latest developments in AI focus on agentic systems where artificial and human agents cooperate to realize global goals. An example is collaborative learning, which aims to train a global model based on data from individual agents. A major challenge in designing such systems is to guarantee safety and alignment with human values, particularly a fair distribution of rewards upon achieving the global goal. Cooperative game theory offers useful abstractions of cooperating agents via value functions, which assign value to each coalition, and via reward functions. With these, the idea of fair allocation can be formalized by specifying fairness axioms and designing concrete mechanisms. Classical cooperative game theory, exemplified by the Shapley value, does not fully capture scenarios like collaborative learning, as it assumes nonreplicable resources, whereas data and models can be replicated. Infinite replicability requires a generalized notion of fairness, formalized through new axioms and mechanisms. These must address imbalances in reciprocal benefits among participants, which can lead to strategic exploitation and unfair allocations. The main contribution of this paper is a mechanism and a proof that it fulfills the property of mutual fairness, formalized by the Balanced Reciprocity Axiom. It ensures that, for every pair of players, each benefits equally from the participation of the other.

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