Abstract

While most models of randomly connected neural networks assume single-neuron models with simple dynamics, neurons in the brain exhibit complex intrinsic dynamics over multiple timescales. We analyze how the dynamical properties of single neurons and recurrent connections interact to shape the effective dynamics in large randomly connected networks. A novel dynamical mean-field theory for strongly connected networks of multi-dimensional rate neurons shows that the power spectrum of the network activity in the chaotic phase emerges from a nonlinear sharpening of the frequency response function of single neurons. For the case of two-dimensional rate neurons with strong adaptation, we find that the network exhibits a state of “resonant chaos”, characterized by robust, narrow-band stochastic oscillations. The coherence of stochastic oscillations is maximal at the onset of chaos and their correlation time scales with the adaptation timescale of single units. Surprisingly, the resonance frequency can be predicted from the properties of isolated neurons, even in the presence of heterogeneity in the adaptation parameters. In the presence of these internally-generated chaotic fluctuations, the transmission of weak, low-frequency signals is strongly enhanced by adaptation, whereas signal transmission is not influenced by adaptation in the non-chaotic regime. Our theoretical framework can be applied to other mechanisms at the level of single neurons, such as synaptic filtering, refractoriness or spike synchronization. These results advance our understanding of the interaction between the dynamics of single units and recurrent connectivity, which is a fundamental step toward the description of biologically realistic neural networks.

Highlights

  • The existence of a chaotic phase is a common property of large networks of neurons with random connectivity [1, 2]

  • We show how accounting for richer single-neuron dynamics results in shaping the network dynamics and determines which signals are better transmitted

  • An important mechanism present in biological neurons that consists in the decrease of their firing rate in response to a sustained stimulus

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Summary

Introduction

The existence of a chaotic phase is a common property of large networks of neurons with random connectivity [1, 2]. Chaotic dynamics has been proposed as a mechanism for internallygenerated cortical variability [3,4,5] and the richness of the dynamics at the edge of chaos has been exploited to learn complex tasks involving generation of temporal patterns [6,7,8,9,10,11,12] In these and other related approaches, the chaotic behavior of the network mainly arises from the random interactions, whereas the dynamics of single neurons are typically given by first-order differential equations. We develop a theoretical framework that extends DMFT to multi-dimensional rate neurons Using this framework, we show that the power spectrum of the network activity in the nonlinear, strongly coupled regime, emerges from a sharpening of the single-neuron frequency response function due to strong recurrent connections

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