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BPLC + NOSO: backpropagation of errors based on latency code with neurons that only spike once at mostopen accessBPLC plus NOSO: backpropagation of errors based on latency code with neurons that only spike once at most

Other Titles
BPLC plus NOSO: backpropagation of errors based on latency code with neurons that only spike once at most
Authors
Jin, Seong MinKim, DohunYoo, Dong HyungEshraghian, JasonJeong, Doo Seok
Issue Date
Oct-2023
Publisher
SPRINGER HEIDELBERG
Keywords
Backpropagation based on latency code; Spiking neural networks; Minimum-latency pooling; Symmetric dual threshold
Citation
COMPLEX&INTELLIGENT SYSTEMS, v.9, no.5, pp.4959 - 4976
Indexed
SCIE
SCOPUS
Journal Title
COMPLEX&INTELLIGENT SYSTEMS
Volume
9
Number
5
Start Page
4959
End Page
4976
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/192064
DOI
10.1007/s40747-023-00983-y
ISSN
2199-4536
Abstract
For mathematical completeness, we propose an error-backpropagation algorithm based on latency code (BPLC) with spiking neurons conforming to the spike–response model but allowed to spike once at most (NOSOs). BPLC is based on gradients derived without approximation unlike previous temporal code-based error-backpropagation algorithms. The latency code uses the spiking latency (period from the first input spike to spiking) as a measure of neuronal activity. To support the latency code, we introduce a minimum-latency pooling layer that passes the spike of the minimum latency only for a given patch. We also introduce a symmetric dual threshold for spiking (i) to avoid the dead neuron issue and (ii) to confine a potential distribution to the range between the symmetric thresholds. Given that the number of spikes (rather than timesteps) is the major cause of inference delay for digital neuromorphic hardware, NOSONets trained using BPLC likely reduce inference delay significantly. To identify the feasibility of BPLC + NOSO, we trained CNN-based NOSONets on Fashion-MNIST and CIFAR-10. The classification accuracy on CIFAR-10 exceeds the state-of-the-art result from an SNN of the same depth and width by approximately 2%. Additionally, the number of spikes for inference is significantly reduced (by approximately one order of magnitude), highlighting a significant reduction in inference delay.
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