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A cooperative method for supervised learning in Spiking neural networks

机译:Spiking神经网络中的一种协作式监督学习方法

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In Spiking neural networks, information is encoded in separate spike times. The traditional gradient descent based learning algorithm (SpikeProp) trends to be trapped in local optima and cannot converge if the negative synaptic weights are allowed. In this paper, a cooperative PSO (Particle Swarm Optimization) method is proposed for its supervised learning. A simplified neural network structure is suggested. The CPSO-based learning method can improve both the weights of the spike neurons and the delays between the neurons. Both the positive and negative weights can be preserved by the biological neurons. Experiments on benchmark problems show the proposal is reliable and efficient for learning spike patterns.
机译:在尖峰神经网络中,信息以单独的尖峰时间编码。传统的基于梯度下降的学习算法(SpikeProp)倾向于陷入局部最优状态,如果允许负突触权重,则无法收敛。本文提出了一种协同PSO(Particle Swarm Optimization,粒子群优化)方法进行监督学习。建议使用简化的神经网络结构。基于CPSO的学习方法可以同时改善尖峰神经元的权重和神经元之间的延迟。生物神经元可以保留正负两个权重。关于基准问题的实验表明,该建议对于学习峰值模式是可靠且有效的。

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