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. 2022 Dec;16(6):1485-1503.
doi: 10.1007/s11571-022-09803-4. Epub 2022 Apr 15.

Complex spiking neural networks with synaptic time-delay based on anti-interference function

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Complex spiking neural networks with synaptic time-delay based on anti-interference function

Lei Guo et al. Cogn Neurodyn. 2022 Dec.

Abstract

The research on a brain-like model with bio-interpretability is conductive to promoting its information processing ability in the field of artificial intelligence. Biological results show that the synaptic time-delay can improve the information processing abilities of the nervous system, which are an important factor related to the formation of brain cognitive functions. However, the synaptic plasticity with time-delay of a brain-like model still lacks bio-interpretability. In this study, combining excitatory and inhibitory synapses, we construct the complex spiking neural networks (CSNNs) with synaptic time-delay that more conforms biological characteristics, in which the topology has scale-free property and small-world property, and the nodes are represented by an Izhikevich neuron model. Then, the information processing abilities of CSNNs with different types of synaptic time-delay are comparatively evaluated based on the anti-interference function, and the mechanism of this function is discussed. Using two indicators of the anti-interference function and three kinds of noise, our simulation results consistently verify that: (i) From the perspective of anti-interference function, an CSNN with synaptic random time-delay outperforms an CSNN with synaptic fixed time-delay, which in turn outperforms an CSNN with synaptic none time-delay. The results imply that brain-like networks with more bio-interpretable synaptic time-delay have stronger information processing abilities. (ii) The synaptic plasticity is the intrinsic factor of the anti-interference function of CSNNs with different types of synaptic time-delay. (iii) The synaptic random time-delay makes an CSNN present better topological characteristics, which can improve the information processing ability of a brain-like network. It implies that synaptic time-delay is a factor that affects the anti-interference function at the level of performance.

Keywords: Anti-interference; Complex network; Spiking neural network; Synaptic plasticity; Synaptic time-delay.

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Conflict of interest statement

Conflict of interestThe authors have no relevant financial or non-financial interests to disclose.

Figures

Fig. 1
Fig. 1
Firing patterns for Izhikevich neurons. a Excitatory firing pattern. b Inhibitory firing pattern
Fig. 2
Fig. 2
Comparison of δ for CSNNs with different λ under different interference. a White Gaussian noise. b Impulse noise. c Electric field noise
Fig. 3
Fig. 3
Under the same simulation conditions as δ, the averages of five results for ρ of CSNNs with different λ under different interference are shown in Fig. 3. Comparison of ρ for CSNNs with different λ under different interference. a White Gaussian noise. b Impulse noise. c Electric field noise
Fig. 4
Fig. 4
Comparison of δ for CSNNs with different types of synaptic time-delay. a White Gaussian noise. b Impulse noise. c Electric field noise
Fig. 5
Fig. 5
Comparison of ρ for CSNNs with different types of synaptic time-delay. a White Gaussian noise. b Impulse noise. c Electric field noise
Fig. 6
Fig. 6
Firing sequences of Izhikevich neurons under interference. a Excitatory firing. b Inhibitory firing
Fig. 7
Fig. 7
Evolution of the average firing rate
Fig. 8
Fig. 8
The evolution of the average firing rate and its δ. a Average firing rate. b δ
Fig. 9
Fig. 9
Evolution of the average synaptic weight
Fig. 10
Fig. 10
Evolution of the anti-interference function. a Evolution of δ. b Evolution of ρ
Fig. 11
Fig. 11
Evolution of topological characteristics. a Average clustering coefficient. b Average shortest path length

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