Shaping multi-agent systems with gradient reinforcement learning

被引:1
|
作者
Olivier Buffet
Alain Dutech
François Charpillet
机构
[1] LAAS/CNRS,
[2] Groupe RIS,undefined
[3] Loria - INRIA-Lorraine,undefined
关键词
Reinforcement learning; Multi-agent systems; Partially observable Markov decision processes; Shaping; Policy-gradient;
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暂无
中图分类号
学科分类号
摘要
An original reinforcement learning (RL) methodology is proposed for the design of multi-agent systems. In the realistic setting of situated agents with local perception, the task of automatically building a coordinated system is of crucial importance. To that end, we design simple reactive agents in a decentralized way as independent learners. But to cope with the difficulties inherent to RL used in that framework, we have developed an incremental learning algorithm where agents face a sequence of progressively more complex tasks. We illustrate this general framework by computer experiments where agents have to coordinate to reach a global goal.
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页码:197 / 220
页数:23
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