Connectivity structure and dynamics of nonlinear recurrent neural networks

David G. Clark, Owen Marschall, Alexander van Meegen, Ashok Litwin-Kumar
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Abstract

We develop a theory to analyze how structure in connectivity shapes the high-dimensional, internally generated activity of nonlinear recurrent neural networks. Using two complementary methods -- a path-integral calculation of fluctuations around the saddle point, and a recently introduced two-site cavity approach -- we derive analytic expressions that characterize important features of collective activity, including its dimensionality and temporal correlations. To model structure in the coupling matrices of real neural circuits, such as synaptic connectomes obtained through electron microscopy, we introduce the random-mode model, which parameterizes a coupling matrix using random input and output modes and a specified spectrum. This model enables systematic study of the effects of low-dimensional structure in connectivity on neural activity. These effects manifest in features of collective activity, that we calculate, and can be undetectable when analyzing only single-neuron activities. We derive a relation between the effective rank of the coupling matrix and the dimension of activity. By extending the random-mode model, we compare the effects of single-neuron heterogeneity and low-dimensional connectivity. We also investigate the impact of structured overlaps between input and output modes, a feature of biological coupling matrices. Our theory provides tools to relate neural-network architecture and collective dynamics in artificial and biological systems.
非线性递归神经网络的连接结构和动力学
我们建立了一套理论来分析连通性结构如何塑造非线性递归神经网络的高维内部活动。为了模拟真实神经回路耦合矩阵中的结构,例如通过电子显微镜获得的突触连接体,我们引入了随机模式模型,该模型使用随机输入和输出模式以及指定频谱对耦合矩阵进行参数化。这种模型可以系统地研究连接中的低维结构对神经活动的影响。这些影响体现在我们计算的集体活动特征中,而如果只分析单神经元活动,则无法检测到这些特征。我们推导出了耦合矩阵的有效秩与活动维度之间的关系。通过扩展随机模式模型,我们比较了单神经元异质性和低维连接性的影响。我们还研究了输入和输出模式之间结构重叠的影响,这是生物耦合矩阵的一个特征。我们的理论为人工系统和生物系统中神经网络架构和集体动力学的关联提供了工具。
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