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1 Ergebnisse
1
Uncertainty quantification via a memristor Bayesian deep ne..:
Lin, Yudeng
;
Zhang, Qingtian
;
Gao, Bin
...
Nature Machine Intelligence. 5 (2023) 7 - p. 714-723 , 2023
Link:
https://doi.org/10.1038/s42256-023-00680-y
RT Journal T1
Uncertainty quantification via a memristor Bayesian deep neural network for risk-sensitive reinforcement learning
UL https://suche.suub.uni-bremen.de/peid=cr-10.1038_s42256-023-00680-y&Exemplar=1&LAN=DE A1 Lin, Yudeng A1 Zhang, Qingtian A1 Gao, Bin A1 Tang, Jianshi A1 Yao, Peng A1 Li, Chongxuan A1 Huang, Shiyu A1 Liu, Zhengwu A1 Zhou, Ying A1 Liu, Yuyi A1 Zhang, Wenqiang A1 Zhu, Jun A1 Qian, He A1 Wu, Huaqiang PB Springer Science and Business Media LLC YR 2023 SN 2522-5839 JF Nature Machine Intelligence VO 5 IS 7 SP 714 OP 723 LK http://dx.doi.org/https://doi.org/10.1038/s42256-023-00680-y DO https://doi.org/10.1038/s42256-023-00680-y SF ELIB - SuUB Bremen
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