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Nonlinear Dynamics Analysis of a Self-Organizing Recurrent Neural Network: Chaos Waning

机译:自组织循环神经网络的非线性动力学分析:混沌

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摘要

Self-organization is thought to play an important role in structuring nervous systems. It frequently arises as a consequence of plasticity mechanisms in neural networks: connectivity determines network dynamics which in turn feed back on network structure through various forms of plasticity. Recently, self-organizing recurrent neural network models (SORNs) have been shown to learn non-trivial structure in their inputs and to reproduce the experimentally observed statistics and fluctuations of synaptic connection strengths in cortex and hippocampus. However, the dynamics in these networks and how they change with network evolution are still poorly understood. Here we investigate the degree of chaos in SORNs by studying how the networks' self-organization changes their response to small perturbations. We study the effect of perturbations to the excitatory-to-excitatory weight matrix on connection strengths and on unit activities. We find that the network dynamics, characterized by an estimate of the maximum Lyapunov exponent, becomes less chaotic during its self-organization, developing into a regime where only few perturbations become amplified. We also find that due to the mixing of discrete and (quasi-)continuous variables in SORNs, small perturbations to the synaptic weights may become amplified only after a substantial delay, a phenomenon we propose to call deferred chaos.
机译:人们认为自组织在构造神经系统中起重要作用。它通常是神经网络中可塑性机制的结果:连接性决定了网络动态性,而动态性又通过各种形式的可塑性反馈给网络结构。最近,自组织的递归神经网络模型(SORN)已被证明可以学习其输入中的非平凡结构,并可以再现实验观察到的统计数据以及皮层和海马突触连接强度的波动。但是,对于这些网络中的动态以及它们如何随着网络发展而变化仍然知之甚少。在这里,我们通过研究网络的自组织如何改变其对小扰动的响应来研究SORNs的混乱程度。我们研究了兴奋对兴奋体重矩阵的摄动对连接强度和单位活动的影响。我们发现,以最大Lyapunov指数估计为特征的网络动力学,在其自组织过程中变得越来越不混乱,发展为仅扰动被放大的状态。我们还发现,由于在SORNs中混合了离散变量和(准)连续变量,对突触权重的细微扰动只有在明显延迟后才可能被放大,我们将这种现象称为延迟混沌。

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