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Randomized Entity−wise Factorization for Multi−Agent Reinforcement Learning

Shariq Iqbal‚ Christian A Schroeder De Witt‚ Bei Peng‚ Wendelin Boehmer‚ Shimon Whiteson and Fei Sha

Abstract

Multi-agent settings in the real world often involve tasks with varying types and quantities of agents and non-agent entities; however, common patterns of behavior often emerge among these agents/entities. Our method aims to leverage these commonalities by asking the question: “What is the expected utility of each agent when only considering a randomly selected sub-group of its observed entities?” By posing this counterfactual question, we can recognize state-action trajectories within sub-groups of entities that we may have encountered in another task and use what we learned in that task to inform our prediction in the current one. We then reconstruct a prediction of the full returns as a combination of factors considering these disjoint groups of entities and train this “randomly factorized" value function as an auxiliary objective for value-based multi-agent reinforcement learning. By doing so, our model can recognize and leverage similarities across tasks to improve learning efficiency in a multi-task setting. Our approach, Randomized Entity-wise Factorization for Imagined Learning (REFIL), outperforms all strong baselines by a significant margin in challenging multi-task StarCraft micromanagement settings.

Book Title
Proceedings of the 38th International Conference on Machine Learning
Editor
Meila‚ Marina and Zhang‚ Tong
Month
18–24 Jul
Pages
4596–4606
Publisher
PMLR
Series
Proceedings of Machine Learning Research
Volume
139
Year
2021