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      Learning to Communicate with Deep Multi-Agent Reinforcement Learning

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          Abstract

          We consider the problem of multiple agents sensing and acting in environments with the goal of maximising their shared utility. In these environments, agents must learn communication protocols in order to share information that is needed to solve the tasks. By embracing deep neural networks, we are able to demonstrate end-to-end learning of protocols in complex environments inspired by communication riddles and multi-agent computer vision problems with partial observability. We propose two approaches for learning in these domains: Reinforced Inter-Agent Learning (RIAL) and Differentiable Inter-Agent Learning (DIAL). The former uses deep Q-learning, while the latter exploits the fact that, during learning, agents can backpropagate error derivatives through (noisy) communication channels. Hence, this approach uses centralised learning but decentralised execution. Our experiments introduce new environments for studying the learning of communication protocols and present a set of engineering innovations that are essential for success in these domains.

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          Author and article information

          Journal
          arXiv
          2016
          21 May 2016
          24 May 2016
          24 May 2016
          25 May 2016
          May 2016
          Article
          10.48550/ARXIV.1605.06676
          6d3d2979-4c9d-4cc9-988a-6846cfaaf975

          arXiv.org perpetual, non-exclusive license

          History

          Quantitative & Systems biology,Biophysics
          Artificial Intelligence (cs.AI),Machine Learning (cs.LG),Multiagent Systems (cs.MA),FOS: Computer and information sciences

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