MAAILGFeb 27, 2025

Exponential Topology-enabled Scalable Communication in Multi-agent Reinforcement Learning

arXiv:2502.19717v19 citationsh-index: 5Has CodeICLR
Originality Highly original
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This addresses the problem of partial observability and communication complexity in large-scale cooperative multi-agent systems, offering a scalable solution that improves task performance.

The paper tackled the challenge of scalable communication in large-scale multi-agent reinforcement learning by proposing ExpoComm, a protocol based on exponential topology, which demonstrated superior performance and robust zero-shot transferability in benchmarks like MAgent and Infrastructure Management Planning.

In cooperative multi-agent reinforcement learning (MARL), well-designed communication protocols can effectively facilitate consensus among agents, thereby enhancing task performance. Moreover, in large-scale multi-agent systems commonly found in real-world applications, effective communication plays an even more critical role due to the escalated challenge of partial observability compared to smaller-scale setups. In this work, we endeavor to develop a scalable communication protocol for MARL. Unlike previous methods that focus on selecting optimal pairwise communication links-a task that becomes increasingly complex as the number of agents grows-we adopt a global perspective on communication topology design. Specifically, we propose utilizing the exponential topology to enable rapid information dissemination among agents by leveraging its small-diameter and small-size properties. This approach leads to a scalable communication protocol, named ExpoComm. To fully unlock the potential of exponential graphs as communication topologies, we employ memory-based message processors and auxiliary tasks to ground messages, ensuring that they reflect global information and benefit decision-making. Extensive experiments on large-scale cooperative benchmarks, including MAgent and Infrastructure Management Planning, demonstrate the superior performance and robust zero-shot transferability of ExpoComm compared to existing communication strategies. The code is publicly available at https://github.com/LXXXXR/ExpoComm.

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