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A Survey on Transfer Learning for Multiagent Reinforcement Learning Systems
Author(s) -
Felipe Leno da Silva,
Anna Helena Reali Costa
Publication year - 2019
Publication title -
journal of artificial intelligence research
Language(s) - English
Resource type - Journals
eISSN - 1943-5037
pISSN - 1076-9757
DOI - 10.1613/jair.1.11396
Subject(s) - reuse , computer science , reinforcement learning , scratch , task (project management) , multi agent system , knowledge transfer , transfer of learning , artificial intelligence , human–computer interaction , knowledge management , systems engineering , engineering , programming language , waste management
Multiagent Reinforcement Learning (RL) solves complex tasks that require coordination with other agents through autonomous exploration of the environment. However, learning a complex task from scratch is impractical due to the huge sample complexity of RL algorithms. For this reason, reusing knowledge that can come from previous experience or other agents is indispensable to scale up multiagent RL algorithms. This survey provides a unifying view of the literature on knowledge reuse in multiagent RL. We define a taxonomy of solutions for the general knowledge reuse problem, providing a comprehensive discussion of recent progress on knowledge reuse in Multiagent Systems (MAS) and of techniques for knowledge reuse across agents (that may be actuating in a shared environment or not). We aim at encouraging the community to work towards reusing all the knowledge sources available in a MAS. For that, we provide an in-depth discussion of current lines of research and open questions.

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