电导摄动下尖峰神经网络的学习群体

Piotr Suszynski, Pawel Wawrzynski
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引用次数: 2

摘要

本文提出了一种尖峰神经网络的学习方法。它是基于突触传导的扰动。虽然这种方法被认为是无模型的,但它也被认为是缓慢的,因为它应用了具有大方差的改进方向估计。本文分析了两种方法来缓解这个问题:第一,同时学习多个网络,而不是一个网络。第二,摄动在时间上的自相关。在实验研究中,该方法在三个具有频率和脉冲定时的学习任务中得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning population of spiking neural networks with perturbation of conductances
In this paper a method is presented for learning of spiking neural networks. It is based on perturbation of synaptic conductances. While this approach is known to be model-free, it is also known to be slow, because it applies improvement direction estimates with large variance. Two ideas are analysed to alleviate this problem: First, learning of many networks at the same time instead of one. Second, autocorrelation of perturbations in time. In the experimental study the method is validated on three learning tasks in which information is conveyed with frequency and spike timing.
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