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Supervised Learning Algorithm for Multilayer Spiking Neural Networks with Long‐Term Memory Spike Response Model

Xianghong Lin, Mengwei Zhang, Xiangwen Wang

2021Computational Intelligence and Neuroscience10 citationsDOIOpen Access PDF

Abstract

As a new brain-inspired computational model of artificial neural networks, spiking neural networks transmit and process information via precisely timed spike trains. Constructing efficient learning methods is a significant research field in spiking neural networks. In this paper, we present a supervised learning algorithm for multilayer feedforward spiking neural networks; all neurons can fire multiple spikes in all layers. The feedforward network consists of spiking neurons governed by biologically plausible long-term memory spike response model, in which the effect of earlier spikes on the refractoriness is not neglected to incorporate adaptation effects. The gradient descent method is employed to derive synaptic weight updating rule for learning spike trains. The proposed algorithm is tested and verified on spatiotemporal pattern learning problems, including a set of spike train learning tasks and nonlinear pattern classification problems on four UCI datasets. Simulation results indicate that the proposed algorithm can improve learning accuracy in comparison with other supervised learning algorithms.

Topics & Concepts

Computer scienceSpike (software development)Spiking neural networkArtificial neural networkArtificial intelligenceFeed forwardGradient descentSupervised learningSet (abstract data type)AlgorithmMachine learningLearning rulePattern recognition (psychology)EngineeringControl engineeringSoftware engineeringProgramming languageAdvanced Memory and Neural ComputingNeural dynamics and brain functionNeural Networks and Reservoir Computing