Solving the Multi-class Classification Task in Spiking Neural Network by using Supervised Spiking Learning Rule with a Consistent Competitive Mechanism

Viet-Ngu Cong Huynh, K. Lee
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Abstract

In recent years, spiking neural networks (SNNs), a computing model inspired by the brain's ability to code and process information in the time domain with great computational power, has drawn a lot of attention from researchers for learning applications. For training in SNNs, several supervised spiking learning rules have been proposed, however, applying these learning algorithms to real-world problems yet remains an open issue. For this reason, this paper presents a new spiking neural network for the handwritten digit dataset classification problem. Our proposed network is trained by using the spike-based NormAD algorithm with a consistent winner-take-all mechanism. The experiment has shown a promising performance just after one epoch passing over the test dataset.
用具有一致竞争机制的有监督Spiking学习规则解决Spiking神经网络中的多类分类任务
近年来,尖峰神经网络(SNNs)作为一种计算模型,受到大脑在时域内编码和处理信息的能力的启发,具有强大的计算能力,在学习应用方面引起了研究人员的广泛关注。对于snn的训练,已经提出了几种监督尖峰学习规则,然而,将这些学习算法应用于现实世界的问题仍然是一个悬而未决的问题。为此,本文提出了一种新的尖峰神经网络用于手写体数字数据集的分类问题。我们提出的网络是使用基于峰值的NormAD算法训练的,该算法具有一致的赢家通吃机制。实验表明,只需经过测试数据集的一个epoch,就可以获得很好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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