Literature DB >> 33748709

EqSpike: spike-driven equilibrium propagation for neuromorphic implementations.

Erwann Martin1, Maxence Ernoult2,3, Jérémie Laydevant2, Shuai Li2, Damien Querlioz3, Teodora Petrisor1, Julie Grollier2.   

Abstract

Finding spike-based learning algorithms that can be implemented within the local constraints of neuromorphic systems, while achieving high accuracy, remains a formidable challenge. Equilibrium propagation is a promising alternative to backpropagation as it only involves local computations, but hardware-oriented studies have so far focused on rate-based networks. In this work, we develop a spiking neural network algorithm called EqSpike, compatible with neuromorphic systems, which learns by equilibrium propagation. Through simulations, we obtain a test recognition accuracy of 97.6% on the MNIST handwritten digits dataset (Mixed National Institute of Standards and Technology), similar to rate-based equilibrium propagation, and comparing favorably to alternative learning techniques for spiking neural networks. We show that EqSpike implemented in silicon neuromorphic technology could reduce the energy consumption of inference and training, respectively, by three orders and two orders of magnitude compared to graphics processing units. Finally, we also show that during learning, EqSpike weight updates exhibit a form of spike-timing-dependent plasticity, highlighting a possible connection with biology.
© 2021 The Authors.

Entities:  

Keywords:  Algorithms; Artificial Intelligence; Computer Science

Year:  2021        PMID: 33748709      PMCID: PMC7970361          DOI: 10.1016/j.isci.2021.102222

Source DB:  PubMed          Journal:  iScience        ISSN: 2589-0042


  3 in total

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Authors:  Guangdong Zhou; Xiaoye Ji; Jie Li; Feichi Zhou; Zhekang Dong; Bingtao Yan; Bai Sun; Wenhua Wang; Xiaofang Hu; Qunliang Song; Lidan Wang; Shukai Duan
Journal:  iScience       Date:  2022-09-28

2.  Deep physical neural networks trained with backpropagation.

Authors:  Logan G Wright; Tatsuhiro Onodera; Martin M Stein; Tianyu Wang; Darren T Schachter; Zoey Hu; Peter L McMahon
Journal:  Nature       Date:  2022-01-26       Impact factor: 69.504

3.  Periodicity Pitch Perception Part III: Sensibility and Pachinko Volatility.

Authors:  Frank Feldhoff; Hannes Toepfer; Tamas Harczos; Frank Klefenz
Journal:  Front Neurosci       Date:  2022-03-08       Impact factor: 4.677

  3 in total

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