SpikeBASE: Spiking Neural Learning Algorithm With Backward Adaptation of Synaptic Efflux

Brain-inspired Spiking Neural Network (SNN) is opening new possibilities towards human-level intelligence, by leveraging its nature of spatiotemporal information encoding and processing that bring both learning effectiveness and energy efficiency. Although substantial advances in SNN studies have be...

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Bibliographic Details
Published inIEEE transactions on computers Vol. 71; no. 11; pp. 2707 - 2716
Main Authors Stauffer, Jake, Zhang, Qingxue
Format Journal Article
LanguageEnglish
Published New York IEEE 01.11.2022
The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
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ISSN0018-9340
1557-9956
DOI10.1109/TC.2022.3197089

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Summary:Brain-inspired Spiking Neural Network (SNN) is opening new possibilities towards human-level intelligence, by leveraging its nature of spatiotemporal information encoding and processing that bring both learning effectiveness and energy efficiency. Although substantial advances in SNN studies have been made, highly effective SNN learning algorithms are still urged, driven by the challenges of coordinating spiking spatiotemporal dynamics. We therefore propose a novel algorithm, SpikeBASE, denoting Spiking learning with Backward Adaption of Synaptic Efflux, to globally, supervisedly, and comprehensively coordinate the synaptic dynamics including both synaptic strength and responses. SpikeBASE can learn synaptic strength by backpropagating the error through the predefined synaptic responses. More importantly, SpikeBASE enables synaptic response adaptation through backpropagation, to mimic the complex dynamics of neural transmissions. Further, SpikeBASE enables multi-scale temporal memory formation by supporting multi-synaptic response adaptation. We have evaluated the algorithm on a challenging scarce data learning task and shown highly promising performance. The proposed SpikeBASE algorithm, through comprehensively coordinating the learning of synaptic strength, synaptic responses, and multi-scale temporal memory formation, has demonstrated its effectiveness on end-to-end SNN training. This study is expected to greatly advance the learning effectiveness of SNN and thus broadly benefit smart and efficient big data applications.
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ISSN:0018-9340
1557-9956
DOI:10.1109/TC.2022.3197089