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Learning Communication Skills in Multi-task Multi-agent Deep Reinforcement Learning

Published: November 5, 2025 | arXiv ID: 2511.03348v2

By: Changxi Zhu, Mehdi Dastani, Shihan Wang

Potential Business Impact:

Robots learn to do many jobs by talking.

Business Areas:
Machine Learning Artificial Intelligence, Data and Analytics, Software

In multi-agent deep reinforcement learning (MADRL), agents can communicate with one another to perform a task in a coordinated manner. When multiple tasks are involved, agents can also leverage knowledge from one task to improve learning in other tasks. In this paper, we propose Multi-task Communication Skills (MCS), a MADRL with communication method that learns and performs multiple tasks simultaneously, with agents interacting through learnable communication protocols. MCS employs a Transformer encoder to encode task-specific observations into a shared message space, capturing shared communication skills among agents. To enhance coordination among agents, we introduce a prediction network that correlates messages with the actions of sender agents in each task. We adapt three multi-agent benchmark environments to multi-task settings, where the number of agents as well as the observation and action spaces vary across tasks. Experimental results demonstrate that MCS achieves better performance than multi-task MADRL baselines without communication, as well as single-task MADRL baselines with and without communication.

Country of Origin
🇳🇱 Netherlands

Page Count
20 pages

Category
Computer Science:
Multiagent Systems