一种利用隐藏网络的SNN训练方法

Chunhui Wu, Wenbing Fang, Yi Kang
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引用次数: 0

摘要

与传统的人工神经网络相比,峰值神经网络具有更高的能量效率,在过去的几十年里,人们提出了许多snn的训练方法。然而,由于SNN的梯度不连续,传统的基于反向传播的训练方法难以在SNN上部署。以前的工作主要集中在重量训练或重量转移。基于彩票假设的卷积神经网络隐藏网络的提出,为在SNN上进行网络连接训练提供了可能。本文将一种基于隐网络的训练算法应用于SNN,以展示其在神经形态尖峰网络上的潜力。提出了一种基于反向传播的替代梯度函数改进隐网络搜索的HNSG训练方法。采用简单的两层全连接SNN模型,在MNIST图像分类任务上对HNSG方法进行了测试。仿真结果表明,在LIF神经元的平均火力强度为0.138时,HNSG的准确率达到93.73%。
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HNSG – A SNN Training Method Ultilizing Hidden Network
Spiking Neural Network is more energy efficient compared to traditional ANNs, and many training methods of SNNs have been proposed in past decades. However, traditional backward-propagation based training methods are difficult to deploy on SNN due to its discontinuous gradient. Previous works mainly focused on weight training or weight transferring. The Hidden Network inspired by Lottery Ticket Hypothesis that is proposed for convolutional neural networks opens possibility of network connection training on SNN. In this article, a training algorithm based on Hidden Network is applied to SNN to show its potential on neuromorphic spiking networks. A novel training method called HNSG is proposed that modifies hidden network search using surrogate gradient function based back propagation. The proposed HNSG method is tested on image classification task using MNIST with simple two fully-connected layer SNN model. Simulation shows HNSG reaches 93.73% accuracy on average fire intensity of 0.138 with LIF neuron.
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