Temporal Sequence Learning With A History-Sensitive Probabilistic Learning Rule Intrinsic To Oxygen Vacancy-Based Rram

2018 IEEE INTERNATIONAL ELECTRON DEVICES MEETING (IEDM)(2018)

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摘要
Widely spread and low value resistance distributions inhibit the use of filamentary resistive RAM (RRAM) at low currents for deep learning training and inference. An entirely different approach which employs RRAM as active computational elements is proposed. For this means, the history-sensitive probabilistic reset in Tantalum-Oxide (TaOx)-based RRAM is characterized and explained. This intrinsic RRAM effect is used as a local learning rule in a novel temporal sequence learning algorithm.
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关键词
resistive RAM,temporal sequence learning,history-sensitive probabilistic reset,deep learning training,oxygen vacancy-based RRAM,history-sensitive probabilistic learning rule intrinsic,local learning rule,Tantalum-Oxide-based RRAM
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