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Training Probabilistic Spiking Neural Networks with First- To-Spike Decoding

机译:培训具有第一秒针解码的概率尖峰神经网络

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Third-generation neural networks, or Spiking Neural Networks (SNNs), aim at harnessing the energy efficiency of spike-domain processing by building on computing elements that operate on, and exchange, spikes. In this paper, the problem of training a two-layer SNN is studied for the purpose of classification, under a Generalized Linear Model (GLM) probabilistic neural model that was previously considered within the computational neuroscience literature. Conventional classification rules for SNNs operate offline based on the number of output spikes at each output neuron. In contrast, a novel training method is proposed here for a first-to-spike decoding rule, whereby the SNN can perform an early classification decision once spike firing is detected at an output neuron. Numerical results bring insights into the optimal parameter selection for the GLM neuron and on the accuracy-complexity trade-off performance of conventional and first-to-spike decoding.
机译:第三代神经网络或尖峰神经网络(SNNS),旨在通过建立在开启和交换,尖峰的计算元件上建立峰域处理的能量效率。在本文中,研究了训练两层SNN的问题,以进行分类,如先前在计算神经科学文献中考虑的广义线性模型(GLM)概率神经模型。 SNN的传统分类规则基于每个输出神经元的输出尖峰数运行离线。相反,在此提出一种新的训练方法,用于第一尖峰解码规则,由此,一旦在输出神经元处检测到尖峰射击,SNN可以执行早期分类决定。数值结果为GLM神经元的最佳参数选择以及传统和第一秒针解码的精度复杂性权衡性能带来了洞察力。

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