Frontiers in Neuroscience (Oct 2022)

Voltage-dependent synaptic plasticity: Unsupervised probabilistic Hebbian plasticity rule based on neurons membrane potential

  • Nikhil Garg,
  • Nikhil Garg,
  • Nikhil Garg,
  • Ismael Balafrej,
  • Ismael Balafrej,
  • Ismael Balafrej,
  • Terrence C. Stewart,
  • Jean-Michel Portal,
  • Marc Bocquet,
  • Damien Querlioz,
  • Dominique Drouin,
  • Dominique Drouin,
  • Jean Rouat,
  • Jean Rouat,
  • Jean Rouat,
  • Yann Beilliard,
  • Yann Beilliard,
  • Fabien Alibart,
  • Fabien Alibart,
  • Fabien Alibart

DOI
https://doi.org/10.3389/fnins.2022.983950
Journal volume & issue
Vol. 16

Abstract

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This study proposes voltage-dependent-synaptic plasticity (VDSP), a novel brain-inspired unsupervised local learning rule for the online implementation of Hebb’s plasticity mechanism on neuromorphic hardware. The proposed VDSP learning rule updates the synaptic conductance on the spike of the postsynaptic neuron only, which reduces by a factor of two the number of updates with respect to standard spike timing dependent plasticity (STDP). This update is dependent on the membrane potential of the presynaptic neuron, which is readily available as part of neuron implementation and hence does not require additional memory for storage. Moreover, the update is also regularized on synaptic weight and prevents explosion or vanishing of weights on repeated stimulation. Rigorous mathematical analysis is performed to draw an equivalence between VDSP and STDP. To validate the system-level performance of VDSP, we train a single-layer spiking neural network (SNN) for the recognition of handwritten digits. We report 85.01 ± 0.76% (Mean ± SD) accuracy for a network of 100 output neurons on the MNIST dataset. The performance improves when scaling the network size (89.93 ± 0.41% for 400 output neurons, 90.56 ± 0.27 for 500 neurons), which validates the applicability of the proposed learning rule for spatial pattern recognition tasks. Future work will consider more complicated tasks. Interestingly, the learning rule better adapts than STDP to the frequency of input signal and does not require hand-tuning of hyperparameters.

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