Decentralized Transformers with Centralized Aggregation Are Sample-Efficient Multi-Agent World Models

Abstract

Learning a world model for model-free Reinforcement Learning (RL) agents can significantly improve the sample efficiency by learning policies in imagination. However, building a world model for Multi-Agent RL (MARL) can be particularly challenging due to the scalability issue across different number of agents in a centralized architecture, and also the non-stationarity issue in a decentralized architecture stemming from the inter-dependency among agents. To address both challenges, we propose a novel world model for MARL that learns decentralized local dynamics for scalability, combined with a centralized representation aggregation from all agents. We cast the dynamics learning as an auto-regressive sequence modeling problem over discrete tokens by leveraging the expressive Transformer architecture, in order to model complex local dynamics across different agents and provide accurate and consistent long-term imaginations. As the first pioneering Transformer-based world model for multi-agent systems, we introduce a Perceiver Transformer as an effective solution to enable centralized representation aggregation within this context. Extensive results on Starcraft Multi-Agent Challenge (SMAC) and MAMujoco demonstrate superior sample efficiency and overall performance compared to strong model-free approaches and existing model-based methods.

Cite

Text

Zhang et al. "Decentralized Transformers with Centralized Aggregation Are Sample-Efficient Multi-Agent World Models." Transactions on Machine Learning Research, 2025.

Markdown

[Zhang et al. "Decentralized Transformers with Centralized Aggregation Are Sample-Efficient Multi-Agent World Models." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/zhang2025tmlr-decentralized/)

BibTeX

@article{zhang2025tmlr-decentralized,
  title     = {{Decentralized Transformers with Centralized Aggregation Are Sample-Efficient Multi-Agent World Models}},
  author    = {Zhang, Yang and Bai, Chenjia and Zhao, Bin and Yan, Junchi and Li, Xiu and Li, Xuelong},
  journal   = {Transactions on Machine Learning Research},
  year      = {2025},
  url       = {https://mlanthology.org/tmlr/2025/zhang2025tmlr-decentralized/}
}