Uncertainty quantification via a memristor Bayesian deep neural network for risk-sensitive reinforcement learning
Yudeng Lin(Tsinghua University), Huaqiang Wu(Tsinghua University), Zhengwu Liu(Tsinghua University), Chongxuan Li(Tsinghua University), Qingtian Zhang(Tsinghua University), Peng Yao(Tsinghua University), Jun Zhu(Center for Life Sciences), Wenqiang Zhang(Tsinghua University), He Qian(Tsinghua University), Yuyi Liu(Sun Yat-sen University), Ying Zhou(Tsinghua University), Jianshi Tang(Tsinghua University), Shiyu Huang(Tsinghua University), Bin Gao(Tsinghua University)
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