Reinforcement learning with analogue memristor arrays
Zhongrui Wang(University of Hong Kong), John Paul Strachan(Hewlett Packard Enterprise (United States)), Qinru Qiu(Syracuse University), Ning Ge(Hewlett Packard Enterprise (United States)), Wenhao Song(University of Massachusetts Amherst), Qiangfei Xia(University of Massachusetts Amherst), Peng Lin(Second Affiliated Hospital of Zhejiang University), Mark Barnell(United States Air Force Research Laboratory), R. Stanley Williams(Hewlett-Packard (United States)), Daniel Belkin(University of Massachusetts Amherst), Andrew G. Barto(Tata Institute of Fundamental Research), Can Li(University of Massachusetts Amherst), Hao Jiang(University of Massachusetts Amherst), Peng Yan(University of Massachusetts Amherst), Yunning Li(University of Massachusetts Amherst), Qing Wu(United States Air Force Research Laboratory), Miao Hu(Binghamton University), Mingyi Rao(University of Massachusetts Amherst)
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