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Improving Multi-Agent Cooperation Using Directed Exploration

Author name : INES HOSNI EP TABBAKH
Publication Date : 2020-11-24
Journal Name : IEEE(ICCIS 2020)

Abstract

In this work, we are addressing the problem of fully cooperative multi-agent system (MASs) with the same common goal for all agents. Coordination question is the main focus in such systems: how to ensure that the agents' own decisions contribute to the group's jointly optimal decisions? To solve this, a new multi-agent reinforcement learning algorithm, named TM LRVS Qlearning, is introduced and tested. The usefulness of this new method is shown using a simulated hunting game.

Keywords

Reinforcement learning , Multi-agent systems , Games , Mathematical model , Convergence , Testing , Task analysis

Publication Link

https://ieeexplore.ieee.org/document/9257684

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