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Neural network firing-rate models on integral form

机译:积分形式的神经网络点火率模型

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摘要

Firing-rate models describing neural-network activity can be formulated in terms of differential equations for the synaptic drive from neurons. Such models are typically derived from more general models based on Volterra integral equations assuming exponentially decaying temporal coupling kernels describing the coupling of pre- and postsynaptic activities. Here we study models with other choices of temporal coupling kernels. In particular, we investigate the stability properties of constant solutions of two-population Volterra models by studying the equilibrium solutions of the corresponding autonomous dynamical systems, derived using the linear chain trick, by means of the Routh–Hurwitz criterion. In the four investigated synaptic-drive models with identical equilibrium points we find that the choice of temporal coupling kernels significantly affects the equilibrium-point stability properties. A model with an α-function replacing the standard exponentially decaying function in the inhibitory coupling kernel is in most of our examples found to be most prone to instability, while the opposite situation with an α-function describing the excitatory kernel is found to be least prone to instability. The standard model with exponentially decaying coupling kernels is typically found to be an intermediate case. We further find that stability is promoted by increasing the weight of self-inhibition or shortening the time constant of the inhibition.
机译:可以根据用于神经元的突触驱动的微分方程来制定描述神经网络活动的射击率模型。这样的模型通常是从​​基于Volterra积分方程的更一般的模型推导而来的,这些模型假设描述突触前和突触后活动的耦合呈指数衰减的时间耦合内核。在这里,我们研究具有其他选择的时间耦合内核的模型。特别是,我们通过研究相应的自治动力学系统的平衡解,研究了两种群Volterra模型的常数解的稳定性,该平衡解是使用Routh–Hurwitz准则,使用线性链技巧获得的。在具有相同平衡点的四个研究的突触驱动模型中,我们发现时间耦合内核的选择会显着影响平衡点稳定性。在我们的大多数示例中,用α函数代替抑制耦合核中标准指数衰减函数的模型最容易出现不稳定,而使用α函数描述兴奋性核的相反情况最少。容易不稳定。通常发现具有指数衰减耦合核的标准模型是中间情况。我们进一步发现,通过增加自抑制的权重或缩短抑制的时间常数可以提高稳定性。

著录项

  • 来源
    《Biological Cybernetics》 |2007年第3期|195-209|共15页
  • 作者单位

    Department of Mathematical Sciences and Technology and Center for Integrative Genetics Norwegian University of Life Sciences P. O. Box 5003 1432 Ås Norway;

    Department of Mathematical Sciences and Technology and Center for Integrative Genetics Norwegian University of Life Sciences P. O. Box 5003 1432 Ås Norway;

    Department of Mathematical Sciences and Technology and Center for Integrative Genetics Norwegian University of Life Sciences P. O. Box 5003 1432 Ås Norway;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Neural networks; Firing rate; Volterra; Stability; Temporal coupling; Routh–Hurwitz;

    机译:神经网络;射速;Volterra;稳定性;时间耦合;Routh-Hurwitz;

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