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Hierarchical Imitation Learning of Team Behavior from Heterogeneous Demonstrations

24 February 2025
Sangwon Seo
Vaibhav Unhelkar
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Abstract

Successful collaboration requires team members to stay aligned, especially in complex sequential tasks. Team members must dynamically coordinate which subtasks to perform and in what order. However, real-world constraints like partial observability and limited communication bandwidth often lead to suboptimal collaboration. Even among expert teams, the same task can be executed in multiple ways. To develop multi-agent systems and human-AI teams for such tasks, we are interested in data-driven learning of multimodal team behaviors. Multi-Agent Imitation Learning (MAIL) provides a promising framework for data-driven learning of team behavior from demonstrations, but existing methods struggle with heterogeneous demonstrations, as they assume that all demonstrations originate from a single team policy. Hence, in this work, we introduce DTIL: a hierarchical MAIL algorithm designed to learn multimodal team behaviors in complex sequential tasks. DTIL represents each team member with a hierarchical policy and learns these policies from heterogeneous team demonstrations in a factored manner. By employing a distribution-matching approach, DTIL mitigates compounding errors and scales effectively to long horizons and continuous state representations. Experimental results show that DTIL outperforms MAIL baselines and accurately models team behavior across a variety of collaborative scenarios.

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@article{seo2025_2502.17618,
  title={ Hierarchical Imitation Learning of Team Behavior from Heterogeneous Demonstrations },
  author={ Sangwon Seo and Vaibhav Unhelkar },
  journal={arXiv preprint arXiv:2502.17618},
  year={ 2025 }
}
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