Social Optimum Equilibrium Selection for Distributed Multi-Agent Optimization
Duong Nguyen, Langford White, Hung Nguyen

TL;DR
This paper introduces a novel regret matching-based algorithm enabling agents in multi-agent systems to learn and converge to the social optimum equilibrium, maximizing collective welfare in distributed control scenarios.
Contribution
The paper proposes an extended regret matching algorithm that incorporates global utility, exploration, and action retention to reliably select the social optimum in multi-agent games.
Findings
Algorithm converges to social optimum equilibrium in simulations.
Effective in large-scale resource allocation scenarios.
Outperforms traditional regret matching methods.
Abstract
We study the open question of how players learn to play a social optimum pure-strategy Nash equilibrium (PSNE) through repeated interactions in general-sum coordination games. A social optimum of a game is the stable Pareto-optimal state that provides a maximum return in the sum of all players' payoffs (social welfare) and always exists. We consider finite repeated games where each player only has access to its own utility (or payoff) function but is able to exchange information with other players. We develop a novel regret matching (RM) based algorithm for computing an efficient PSNE solution that could approach a desired Pareto-optimal outcome yielding the highest social welfare among all the attainable equilibria in the long run. Our proposed learning procedure follows the regret minimization framework but extends it in three major ways: (1) agents use global, instead of local,…
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Taxonomy
TopicsGame Theory and Applications · Experimental Behavioral Economics Studies · Decision-Making and Behavioral Economics
