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Supervised Learning in Spiking Neural Networks for Precise Temporal Encoding

机译:尖峰神经网络中的监督学习进行精确的时间编码

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摘要

Precise spike timing as a means to encode information in neural networks is biologically supported, and is advantageous over frequency-based codes by processing input features on a much shorter time-scale. For these reasons, much recent attention has been focused on the development of supervised learning rules for spiking neural networks that utilise a temporal coding scheme. However, despite significant progress in this area, there still lack rules that have a theoretical basis, and yet can be considered biologically relevant. Here we examine the general conditions under which synaptic plasticity most effectively takes place to support the supervised learning of a precise temporal code. As part of our analysis we examine two spike-based learning methods: one of which relies on an instantaneous error signal to modify synaptic weights in a network (INST rule), and the other one relying on a filtered error signal for smoother synaptic weight modifications (FILT rule). We test the accuracy of the solutions provided by each rule with respect to their temporal encoding precision, and then measure the maximum number of input patterns they can learn to memorise using the precise timings of individual spikes as an indication of their storage capacity. Our results demonstrate the high performance of the FILT rule in most cases, underpinned by the rule’s error-filtering mechanism, which is predicted to provide smooth convergence towards a desired solution during learning. We also find the FILT rule to be most efficient at performing input pattern memorisations, and most noticeably when patterns are identified using spikes with sub-millisecond temporal precision. In comparison with existing work, we determine the performance of the FILT rule to be consistent with that of the highly efficient E-learning Chronotron rule, but with the distinct advantage that our FILT rule is also implementable as an online method for increased biological realism.
机译:生物学上支持精确的尖峰定时作为在神经网络中编码信息的一种手段,通过在短得多的时间尺度上处理输入特征,它比基于频率的代码更具优势。由于这些原因,最近的注意力集中在开发用于利用时间编码方案的尖峰神经网络的监督学习规则的开发上。然而,尽管在该领域取得了重大进展,但仍缺乏具有理论基础的规则,但仍被认为与生物学相关。在这里,我们研究了一般情况下突触可塑性最有效地发生,以支持精确时间代码的监督学习。作为我们分析的一部分,我们研究了两种基于尖峰的学习方法:一种依靠瞬时误差信号来修改网络中的突触权重(INST规则),另一种依靠滤波后的误差信号来更平滑地调节突触权重。 (FILT规则)。我们测试每个规则相对于它们的时间编码精度所提供的解决方案的准确性,然后使用单个峰值的精确定时作为它们存储容量的指标,来衡量它们可以学习记忆的最大输入模式。我们的结果表明,在大多数情况下,FILT规则的高性能都受到该规则的错误过滤机制的支持,该机制有望在学习过程中向所需解决方案提供平稳收敛。我们还发现FILT规则在执行输入模式记忆时最有效,并且在使用亚毫秒级时间精度的尖峰识别模式时最为明显。与现有工作相比,我们确定FILT规则的性能与高效的电子学习计时加速器规则一致,但具有明显的优势,即我们的FILT规则也可以作为一种在线方法来实现,以提高生物真实性。

著录项

  • 期刊名称 PLoS Clinical Trials
  • 作者

    Brian Gardner; André Grüning;

  • 作者单位
  • 年(卷),期 2011(11),8
  • 年度 2011
  • 页码 e0161335
  • 总页数 28
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 12:35:43

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