NENCSep 18, 2019

Bifurcation Spiking Neural Network

arXiv:1909.08341v39 citations
Originality Highly original
AI Analysis

This addresses a key bottleneck in SNNs for modeling time-dependent signals, offering an adaptive solution that improves accuracy and reliability, though it is incremental as it builds on existing SNN frameworks.

The paper tackles the problem of manually setting fixed control rates in spiking neural networks (SNNs), which affects firing rates and performance, by introducing the Bifurcation Spiking Neural Network (BSNN) with adaptive firing rates based on adaptable eigenvalues, achieving superior performance and robustness across various tasks.

Spiking neural networks (SNNs) has attracted much attention due to its great potential of modeling time-dependent signals. The firing rate of spiking neurons is decided by control rate which is fixed manually in advance, and thus, whether the firing rate is adequate for modeling actual time series relies on fortune. Though it is demanded to have an adaptive control rate, it is a non-trivial task because the control rate and the connection weights learned during the training process are usually entangled. In this paper, we show that the firing rate is related to the eigenvalue of the spike generation function. Inspired by this insight, by enabling the spike generation function to have adaptable eigenvalues rather than parametric control rates, we develop the Bifurcation Spiking Neural Network (BSNN), which has an adaptive firing rate and is insensitive to the setting of control rates. Experiments validate the effectiveness of BSNN on a broad range of tasks, showing that BSNN achieves superior performance to existing SNNs and is robust to the setting of control rates.

Foundations

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