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Learning to Participate through Trading of Reward Shares

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arxiv 2301.07416 v1 pith:B6CHE77Q submitted 2023-01-18 cs.MA cs.AI

Learning to Participate through Trading of Reward Shares

classification cs.MA cs.AI
keywords agentsotherparticipaterewardrewardssharesaccordingacquiring
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Enabling autonomous agents to act cooperatively is an important step to integrate artificial intelligence in our daily lives. While some methods seek to stimulate cooperation by letting agents give rewards to others, in this paper we propose a method inspired by the stock market, where agents have the opportunity to participate in other agents' returns by acquiring reward shares. Intuitively, an agent may learn to act according to the common interest when being directly affected by the other agents' rewards. The empirical results of the tested general-sum Markov games show that this mechanism promotes cooperative policies among independently trained agents in social dilemma situations. Moreover, as demonstrated in a temporally and spatially extended domain, participation can lead to the development of roles and the division of subtasks between the agents.

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