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Training multi-layer spiking neural networks using NormAD based spatio-temporal error backpropagation

机译:使用基于NormAD的时空误差反向传播训练多层峰值神经网络

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Spiking neural networks (SNNs) have garnered a great amount of interest for supervised and unsupervised learning applications. This paper deals with the problem of training multi-layer feedforward SNNs. The non-linear integrate-and-fire dynamics employed by spiking neurons make it difficult to train SNNs to generate desired spike trains in response to a given input. To tackle this, first the problem of training a multi-layer SNN is formulated as an optimization problem such that its objective function is based on the deviation in membrane potential rather than the spike arrival instants. Then, an optimization method named Normalized Approximate Descent (NormAD), hand-crafted for such non-convex optimization problems, is employed to derive the iterative synaptic weight update rule. Next, it is reformulated to efficiently train multi-layer SNNs, and is shown to be effectively performing spatio-temporal error backpropagation. The learning rule is validated by training 2-layer SNNs to solve a spike based formulation of the XOR problem as well as training 3-layer SNNs for generic spike based training problems. Thus, the new algorithm is a key step towards building deep spiking neural networks capable of efficient event-triggered learning. (C) 2019 Elsevier B.V. All rights reserved.
机译:尖峰神经网络(SNN)对于有监督和无监督的学习应用引起了极大的兴趣。本文讨论了训练多层前馈SNN的问题。尖峰神经元采用的非线性积分和发射动力学使其难以训练SNN以响应给定输入而生成所需的尖峰序列。为了解决这个问题,首先将训练多层SNN的问题公式化为一个优化问题,以使其目标函数基于膜电位的偏差而不是尖峰到达瞬间。然后,针对这种非凸优化问题手工制作的优化方法称为归一化近似下降(NormAD),用于得出迭代突触权重更新规则。接下来,将其重新构造以有效地训练多层SNN,并被证明可以有效地执行时空误差反向传播。通过训练2层SNN解决基于XOR问题的基于尖峰的公式以及针对通用的基于尖峰的训练问题对3层SNN进行训练来验证学习规则。因此,新算法是朝着建立能够有效触发事件的学习的深度学习神经网络的关键步骤。 (C)2019 Elsevier B.V.保留所有权利。

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