Sparse communication in multi-agent deep reinforcement learning

Publication date

2025-04-07

Authors

Han, ShuaiISNI 0000000523493781
Dastani, MehdiISNI 0000000043464658
Wang, ShihanISNI 0000000492960219

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

Learning to communicate efficiently is central to multi-agent deep reinforcement learning (MADRL). Existing methods often require agents to exchange messages intensively, which abuses communication channels and leads to high communication overhead. Only a few methods target on learning sparse communication, but they allow limited information to be shared, which affects the efficiency of policy learning. In this work, we propose a multi-agent deep reinforcement learning framework with a decentralized communication scheduling process. The proposed framework, which we call Model-Based Communication (MBC), employs supervised learning to build a message estimation model. This model is used by individual agents to decide if they have to communicate their local information to other agents: agents do not communicate their local information if the intended messages can be properly estimated by others. The MBC framework enables multiple agents to make decisions with sparse communication. We evaluate our framework in a variety of mixed cooperative-competitive environments in both homogeneous and heterogeneous domains. The experimental results show that the MBC improves the performance the state-of-art baselines in both domains and leads to a lower communication overhead compared to the baselines.

Keywords

Communication learning, Heterogeneous agents, Message scheduling, Multi-agent deep reinforcement learning, Multi-agent system, Taverne, Computer Science Applications, Cognitive Neuroscience, Artificial Intelligence

Citation

Han, S, Dastani, M & Wang, S 2025, 'Sparse communication in multi-agent deep reinforcement learning', Neurocomputing, vol. 625, 129344, pp. 1-14. https://doi.org/10.1016/j.neucom.2025.129344