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Large Deviations, Dynamics and Phase Transitions in Large Stochastic and Disordered Neural Networks

机译:大型随机和无序神经网络中的大偏差,动力学和相变

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Neuronal networks are characterized by highly heterogeneous connectivity, and this disorder was recently related experimentally to qualitative properties of the network. The motivation of this paper is to mathematically analyze the role of these disordered connectivities on the large-scale properties of neuronal networks. To this end, we analyze here large-scale limit behaviors of neural networks including, for biological relevance, multiple populations, random connectivities and interaction delays. Due to the randomness of the connectivity, usual mean-field methods (e.g. coupling) cannot be applied, but, similarly to studies developed for spin glasses, we will show that the sequences of empirical measures satisfy a large deviation principle, and converge towards a self-consistent non-Markovian process. From a mathematical viewpoint, the proof differs from previous works in that we are working in infinite-dimensional spaces (interaction delays) and consider multiple cell types. The limit obtained formally characterizes the macroscopic behavior of the network. We propose a dynamical systems approach in order to address the qualitative nature of the solutions of these very complex equations, and apply this methodology to three instances in order to show how non-centered coefficients, interaction delays and multiple populations networks are affected by disorder levels. We identify a number of phase transitions in such systems upon changes in delays, connectivity patterns and dispersion, and particularly focus on the emergence of non-equilibrium states involving synchronized oscillations.
机译:神经网络的特征是高度异构的连通性,最近这种疾病在实验上与网络的定性有关。本文的动机是对这些无序连接性在神经网络的大规模属性中的作用进行数学分析。为此,我们在这里分析神经网络的大规模极限行为,包括生物学相关性,多个种群,随机连接性和相互作用延迟。由于连通性的随机性,无法应用通常的均场方法(例如耦合),但是,与针对自旋玻璃的研究类似,我们将证明经验测度的序列满足大偏差原理,并收敛于自洽非马尔可夫过程。从数学的角度来看,该证明与以前的工作不同之处在于,我们在无限维空间(交互延迟)中进行工作,并考虑了多种像元类型。所获得的极限正式表征了网络的宏观行为。我们提出了一种动力学系统方法,以解决这些非常复杂方程的解的定性性质,并将此方法应用于三个实例,以显示无中心系数,相互作用延迟和多个人群网络如何受到无序水平的影响。我们根据延迟,连通性模式和色散的变化确定了此类系统中的许多相变,特别是着眼于涉及同步振荡的非平衡态的出现。

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