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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >An online supervised learning method based on gradient descent for spiking neurons
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An online supervised learning method based on gradient descent for spiking neurons

机译:基于梯度下降的在线监督学习方法掺入神经元

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The purpose of supervised learning with temporal encoding for spiking neurons is to make the neurons emit a specific spike train encoded by precise firing times of spikes. The gradient-descent-based (GDB) learning methods are widely used and verified in the current research. Although the existing GDB multi-spike learning (or spike sequence learning) methods have good performance, they work in an offline manner and still have some limitations. This paper proposes an online GDB spike sequence learning method for spiking neurons that is based on the online adjustment mechanism of real biological neuron synapses. The method constructs error function and calculates the adjustment of synaptic weights as soon as the neurons emit a spike during their running process. We analyze and synthesize desired and actual output spikes to select appropriate input spikes in the calculation of weight adjustment in this paper. The experimental results show that our method obviously improves learning performance compared with the offline learning manner and has certain advantage on learning accuracy compared with other learning methods. Stronger learning ability determines that the method has large pattern storage capacity. (C) 2017 Elsevier Ltd. All rights reserved.
机译:通过用于尖峰神经元的时间编码的监督学习的目的是使神经元发出由精确的射击时间编码的特定尖峰列车。基于梯度下降的(GDB)学习方法在当前的研究中被广泛使用和验证。虽然现有的GDB多钉学习(或尖峰序列学习)方法具有良好的性能,但它们以离线方式工作,仍然有一些局限性。本文提出了一种在线GDB峰值学习方法,用于基于真实生物神经元突触的在线调整机制的尖峰神经元。该方法构造误差函数并尽快计算突触权重的调整,因为神经元在其运行过程中发出峰值时。我们分析和综合所需的和实际输出尖峰,以在本文的重量调整计算中选择合适的输入峰值。实验结果表明,与离线学习方式相比,我们的方法明显提高了学习绩效,与其他学习方法相比,学习准确性有一定的优势。更强的学习能力确定该方法具有大的图案存储容量。 (c)2017 Elsevier Ltd.保留所有权利。

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