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First Error-Based Supervised Learning Algorithm for Spiking Neural Networks

机译:尖峰神经网络的第一个基于错误的监督学习算法

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摘要

Neural circuits respond to multiple sensory stimuli by firing precisely timed spikes. Inspired by this phenomenon, the spike timing-based spiking neural networks (SNNs) are proposed to process and memorize the spatiotemporal spike patterns. However, the response speed and accuracy of the existing learning algorithms of SNNs are still lacking compared to the human brain. To further improve the performance of learning precisely timed spikes, we propose a new weight updating mechanism which always adjusts the synaptic weights at the first wrong output spike time. The proposed learning algorithm can accurately adjust the synaptic weights that contribute to the membrane potential of desired and non-desired firing time. Experimental results demonstrate that the proposed algorithm shows higher accuracy, better robustness, and less computational resources compared with the remote supervised method (ReSuMe) and the spike pattern association neuron (SPAN), which are classic sequence learning algorithms. In addition, the SNN-based computational model equipped with the proposed learning method achieves better recognition results in speech recognition task compared with other bio-inspired baseline systems.
机译:神经回路通过发射精确定时的尖峰来响应多种感觉刺激。受此现象的启发,提出了基于尖峰定时的尖峰神经网络(SNN),以处理和记忆时空尖峰模式。然而,与人脑相比,仍然缺乏现有的SNN学习算法的响应速度和准确性。为了进一步提高学习精确定时尖峰的性能,我们提出了一种新的权重更新机制,该机制始终在第一个错误的输出尖峰时间调整突触权重。所提出的学习算法可以准确地调整突触权重,这些突触权重有助于所需和不希望的触发时间的膜电位。实验结果表明,与经典序列学习算法远程监督方法(ReSuMe)和峰值模式关联神经元(SPAN)相比,该算法具有更高的准确性,鲁棒性和更少的计算资源。此外,与其他生物启发式基线系统相比,配备了所提出的学习方法的基于SNN的计算模型在语音识别任务中获得了更好的识别结果。

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