Supervised Learning With First-to-Spike Decoding in Multilayer Spiking Neural Networks

被引:3
作者
Gardner, Brian [1 ]
Gruening, Andre [2 ]
机构
[1] Univ Surrey, Dept Comp Sci, Guildford, Surrey, England
[2] Univ Appl Sci, Fac Elect Engn & Comp Sci, Stralsund, Germany
关键词
spiking neural networks; multilayer SNN; supervised learning; backpropagation; temporal coding; classification; MNIST; BACKPROPAGATION; CLASSIFICATION; PLASTICITY; NEURONS; MODELS; RULE;
D O I
10.3389/fncom.2021.617862
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Experimental studies support the notion of spike-based neuronal information processing in the brain, with neural circuits exhibiting a wide range of temporally-based coding strategies to rapidly and efficiently represent sensory stimuli. Accordingly, it would be desirable to apply spike-based computation to tackling real-world challenges, and in particular transferring such theory to neuromorphic systems for low-power embedded applications. Motivated by this, we propose a new supervised learning method that can train multilayer spiking neural networks to solve classification problems based on a rapid, first-to-spike decoding strategy. The proposed learning rule supports multiple spikes fired by stochastic hidden neurons, and yet is stable by relying on first-spike responses generated by a deterministic output layer. In addition to this, we also explore several distinct, spike-based encoding strategies in order to form compact representations of presented input data. We demonstrate the classification performance of the learning rule as applied to several benchmark datasets, including MNIST. The learning rule is capable of generalizing from the data, and is successful even when used with constrained network architectures containing few input and hidden layer neurons. Furthermore, we highlight a novel encoding strategy, termed "scanline encoding," that can transform image data into compact spatiotemporal patterns for subsequent network processing. Designing constrained, but optimized, network structures and performing input dimensionality reduction has strong implications for neuromorphic applications.
引用
收藏
页数:24
相关论文
共 50 条
  • [21] Supervised Learning in Spiking Neural Networks with ReSuMe: Sequence Learning, Classification, and Spike Shifting
    Ponulak, Filip
    Kasinski, Andrzej
    NEURAL COMPUTATION, 2010, 22 (02) : 467 - 510
  • [22] An Efficient Supervised Training Algorithm for Multilayer Spiking Neural Networks
    Xie, Xiurui
    Qu, Hong
    Liu, Guisong
    Zhang, Malu
    Kurths, Juergen
    PLOS ONE, 2016, 11 (04):
  • [23] A Supervised Multi-spike Learning Algorithm for Recurrent Spiking Neural Networks
    Lin, Xianghong
    Shi, Guoyong
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2018, PT I, 2018, 11139 : 222 - 234
  • [24] Supervised learning in spiking neural networks with synaptic delay-weight plasticity
    Zhang, Malu
    Wu, Jibin
    Belatreche, Ammar
    Pan, Zihan
    Xie, Xiurui
    Chua, Yansong
    Li, Guoqi
    Qu, Hong
    Li, Haizhou
    NEUROCOMPUTING, 2020, 409 : 103 - 118
  • [25] The maximum points-based supervised learning rule for spiking neural networks
    Xie, Xiurui
    Liu, Guisong
    Cai, Qing
    Qu, Hong
    Zhang, Malu
    SOFT COMPUTING, 2019, 23 (20) : 10187 - 10198
  • [26] Supervised learning in spiking neural networks: A review of algorithms and evaluations
    Wang, Xiangwen
    Lin, Xianghong
    Dang, Xiaochao
    NEURAL NETWORKS, 2020, 125 : 258 - 280
  • [27] Supervised Learning in Spiking Neural Networks for Precise Temporal Encoding
    Gardner, Brian
    Gruning, Andre
    PLOS ONE, 2016, 11 (08):
  • [28] Supervised Learning Based on Temporal Coding in Spiking Neural Networks
    Mostafa, Hesham
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2018, 29 (07) : 3227 - 3235
  • [29] Semi-Supervised Learning for Spiking Neural Networks Based on Spike-Timing-Dependent Plasticity
    Lee, Jongseok
    Sim, Donggyu
    IEEE ACCESS, 2023, 11 : 35140 - 35149
  • [30] Efficient learning in spiking neural networks
    Rast, Alexander
    Aoun, Mario Antoine
    Elia, Eleni G.
    Crook, Nigel
    NEUROCOMPUTING, 2024, 597