2023
DOI: 10.1007/s40747-023-01255-5
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A hierarchical multi-agent allocation-action learning framework for multi-subtask games

Xianglong Li,
Yuan Li,
Jieyuan Zhang
et al.

Abstract: Great progress has been made in the domain of multi-agent reinforcement learning in recent years. Most work concentrates on solving a single task by learning the cooperative behaviors of agents. However, many real-world problems are normally composed of a set of subtasks in which the execution order follows a certain procedure. Cooperative behaviors should be learned on the premise that agents are first allocated to those subtasks. In this paper, we propose a hierarchical framework for learning the dynamic all… Show more

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