Experience-driven Congestion Control: When Multi-Path TCP Meets Deep Reinforcement Learning

IEEE Journal on Selected Areas in Communications(2019)

引用 159|浏览245
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摘要
In this paper, we aim to study networking problems from a whole new perspective by leveraging emerging deep learning, to develop an experience-driven approach, which enables a network or a protocol to learn the best way to control itself from its own experience (e.g., runtime statistics data), just as a human learns a skill. We present design, implementation and evaluation of a deep reinforcement ...
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关键词
Runtime,Mathematical model,Reinforcement learning,Protocols,Heuristic algorithms,Recurrent neural networks,Resource management
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