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A Mathematical Analysis of Memory Lifetime in a Simple Network Model of Memory

机译:简单网络内存中内存生命周期的数学分析

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摘要

We study the learning of an external signal by a neural network and the time to forget it when this network is submitted to noise. The presentation of an external stimulus to the recurrent network of binary neurons may change the state of the synapses. Multiple presentations of a unique signal lead to its learning. Then, during the forgetting time, the presentation of other signals (noise) may also modify the synaptic weights. We construct an estimator of the initial signal using the synaptic currents and in this way define a probability of error. In our model, these synaptic currents evolve as Markov chains. We study the dynamics of these Markov chains and obtain a lower bound on the number of external stimuli that the network can receive before the initial signal is considered forgotten (probability of error above a given threshold). Our results are based on a finite-time analysis rather than large-time asymptotic. We finally present numerical illustrations of our results.
机译:我们通过神经网络研究外部信号的学习,并且当该网络提交噪声时忘记它的时间。对二元神经元的复发网络的外部刺激的呈现可以改变突触的状态。一个独特信号的多个呈现导致其学习。然后,在忘记时间期间,其他信号(噪声)的呈现也可以修改突触权重。我们使用突触电流构建初始信号的估计器,以这种方式定义了错误的概率。在我们的模型中,这些突触电流发展为马尔可夫链。我们研究了这些马尔可夫链条的动态,并获得了在初始信号被认为遗忘之前网络可以接收的外部刺激数的下限(误差概率高于给定阈值)。我们的结果基于有限时间分析而不是大型渐近。我们终于呈现了我们结果的数值例证。

著录项

  • 来源
    《Neural computation》 |2020年第7期|1322-1354|共33页
  • 作者

    Helson Pascal;

  • 作者单位

    Univ Cote Azur INRIA Nice France;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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