2022
DOI: 10.48550/arxiv.2201.01450
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Offsetting Unequal Competition through RL-assisted Incentive Schemes

Abstract: This paper investigates the dynamics of competition among organizations with unequal expertise. Multi-agent reinforcement learning has been used to simulate and understand the impact of various incentive schemes designed to offset such inequality. We design Touch-Mark, a game based on wellknown multi-agent-particle-environment, where two teams (weak, strong) with unequal but changing skill levels compete against each other. For training such a game, we propose a novel controller assisted multi-agent reinforcem… Show more

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