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First Passage Time Memory Lifetimes for Simple, MultistateSynapses: Beyond the Eigenvector Requirement

机译:简单,多态 r n突触的首次通过时间记忆寿命:超出特征向量的要求

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Models of associative memory with discrete-strength synapses are palimpsests, learning new memories by forgetting old ones. Memory lifetimes can be defined by the mean first passage time (MFPT) for a perceptron's activation to fall below firing threshold. By imposing the condition that the vector of possible strengths available to a synapse is a left eigenvector of the stochastic matrix governing transitions in strength, we previously derived results for MFPTs and first passage time (FPT) distributions in models with simple, multistate synapses. This condition permits jump moments to be computed via a 1-dimensional Fokker-Planck approach. Here, we study memory lifetimes in the absence of this condition. To do so, we must introduce additional variables, including the perceptron activation, that parameterize synaptic configurations, permitting Markovian dynamics in these variables to be formulated. FPT problems in these variables require solving multidimensional partial differential or integral equations. However, the FPT dynamics can be analytically well approximated by focusing on the slowest eigenmode in this higher-dimensional space. We may also obtain a much better approximation by restricting to the two dominant variables in this space, the restriction making numerical methods tractable. Analytical and numerical methods are in excellent agreement with simulation data, validating our methods. These methods prepare the ground for the study of FPT memory lifetimes with complex rather than simple, multistate synapses.
机译:具有离散强度突触的联想记忆模型是最简单的,通过忘记旧记忆来学习新记忆。记忆寿命可以通过感知器激活降至触发阈值以下的平均首次通过时间(MFPT)来定义。通过强加一个条件,即可能用于突触的强度向量是控制强度过渡的随机矩阵的左特征向量,我们先前在具有简单,多态突触的模型中得出了MFPT和首次通过时间(FPT)分布的结果。此条件允许通过一维Fokker-Planck方法计算跳跃力矩。在这里,我们研究在没有这种情况下的记忆寿命。为此,我们必须引入其他变量,包括感知器激活,这些变量将突触构型参数化,从而允许在这些变量中制定马尔可夫动力学。这些变量中的FPT问题需要求解多维偏微分或积分方程。但是,通过关注此高维空间中最慢的本征模,可以很好地逼近FPT动力学。通过限制该空间中的两个主要变量,我们还可以获得更好的近似值,该限制使数值方法变得易于处理。分析和数值方法与仿真数据非常吻合,验证了我们的方法。这些方法为研究复杂而不是简单的多态突触的FPT记忆寿命奠定了基础。

著录项

  • 来源
    《Neural computation》 |2019年第1期|8-67|共60页
  • 作者

    Elliott Terry;

  • 作者单位

    Univ Southampton, Dept Elect & Comp Sci, Southampton SO17 1BJ, Hants, England;

  • 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
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