UneVEn: Universal Value Exploration for Multi-Agent Reinforcement Learning

Conference Paper (2021)
Author(s)

Tarun Gupta (University of Oxford)

Anuj Mahajan (University of Oxford)

Bei Peng (University of Oxford)

Wendelin Böhmer (TU Delft - Algorithmics)

Shimon Whiteson (University of Oxford)

Research Group
Algorithmics
Copyright
© 2021 Tarun Gupta, Anuj Mahajan, Bei Peng, J.W. Böhmer, Shimon Whiteson
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 Tarun Gupta, Anuj Mahajan, Bei Peng, J.W. Böhmer, Shimon Whiteson
Research Group
Algorithmics
Volume number
139
Pages (from-to)
3930-3941
Reuse Rights

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Abstract

VDN and QMIX are two popular value-based algorithms for cooperative MARL that learn a centralized action value function as a monotonic mixing of per-agent utilities. While this enables easy decentralization of the learned policy, the restricted joint action value function can prevent them from solving tasks that require significant coordination between agents at a given timestep. We show that this problem can be overcome by improving the joint exploration of all agents during training. Specifically, we propose a novel MARL approach called Universal Value Exploration (UneVEn) that learns a set of related tasks simultaneously with a linear decomposition of universal successor features. With the policies of already solved related tasks, the joint exploration process of all agents can be improved to help them achieve better coordination. Empirical results on a set of exploration games, challenging cooperative predator-prey tasks requiring significant coordination among agents, and StarCraft II micromanagement benchmarks show that UneVEn can solve tasks where other state-of-the-art MARL methods fail.

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