Publication | Closed Access
A Tandem Learning Rule for Effective Training and Rapid Inference of Deep Spiking Neural Networks
153
Citations
36
References
2021
Year
EngineeringMachine LearningSpike CountNeurochipSocial SciencesSparse Neural NetworkSpiking Neural NetworksNeuromorphic EngineeringEffective TrainingNeurocomputersTandem Learning RuleComputer EngineeringNeuromorphic ComputingComputer ScienceNeural NetworksDeep LearningComputational NeuroscienceNeuronal NetworkNeuroscienceRapid InferenceBrain-like ComputingArtificial Neural Network
Spiking neural networks (SNNs) represent the most prominent biologically inspired computing model for neuromorphic computing (NC) architectures. However, due to the nondifferentiable nature of spiking neuronal functions, the standard error backpropagation algorithm is not directly applicable to SNNs. In this work, we propose a tandem learning framework that consists of an SNN and an artificial neural network (ANN) coupled through weight sharing. The ANN is an auxiliary structure that facilitates the error backpropagation for the training of the SNN at the spike-train level. To this end, we consider the spike count as the discrete neural representation in the SNN and design an ANN neuronal activation function that can effectively approximate the spike count of the coupled SNN. The proposed tandem learning rule demonstrates competitive pattern recognition and regression capabilities on both the conventional frame- and event-based vision datasets, with at least an order of magnitude reduced inference time and total synaptic operations over other state-of-the-art SNN implementations. Therefore, the proposed tandem learning rule offers a novel solution to training efficient, low latency, and high-accuracy deep SNNs with low computing resources.
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