Knowledge Engineering and Discovery Research Institute, Auckland University of Technology, New Zealand.
Int J Neural Syst. 2012 Aug;22(4):1250012. doi: 10.1142/S0129065712500128. Epub 2012 Jul 12.
Spiking Neural Networks (SNN) were shown to be suitable tools for the processing of spatio-temporal information. However, due to their inherent complexity, the formulation of efficient supervised learning algorithms for SNN is difficult and remains an important problem in the research area. This article presents SPAN - a spiking neuron that is able to learn associations of arbitrary spike trains in a supervised fashion allowing the processing of spatio-temporal information encoded in the precise timing of spikes. The idea of the proposed algorithm is to transform spike trains during the learning phase into analog signals so that common mathematical operations can be performed on them. Using this conversion, it is possible to apply the well-known Widrow-Hoff rule directly to the transformed spike trains in order to adjust the synaptic weights and to achieve a desired input/output spike behavior of the neuron. In the presented experimental analysis, the proposed learning algorithm is evaluated regarding its learning capabilities, its memory capacity, its robustness to noisy stimuli and its classification performance. Differences and similarities of SPAN regarding two related algorithms, ReSuMe and Chronotron, are discussed.
尖峰神经网络 (SNN) 已被证明是处理时空信息的合适工具。然而,由于其固有的复杂性,为 SNN 制定有效的监督学习算法是困难的,并且仍然是该研究领域的一个重要问题。本文提出了 SPAN-一种能够以监督方式学习任意尖峰列车关联的尖峰神经元,从而能够处理以尖峰精确时间编码的时空信息。所提出算法的思想是在学习阶段将尖峰列车转换为模拟信号,以便对它们执行常见的数学运算。使用这种转换,可以直接将著名的 Widrow-Hoff 规则应用于转换后的尖峰列车,以调整突触权重并实现神经元所需的输入/输出尖峰行为。在呈现的实验分析中,评估了所提出的学习算法在学习能力、存储容量、对噪声刺激的鲁棒性和分类性能方面的性能。讨论了 SPAN 与两个相关算法 ReSuMe 和 Chronotron 的差异和相似之处。