A Microscopic Theory of Intrinsic Timescales in Spiking Neural Networks
Alexander van Meegen, Sacha J. van Albada

TL;DR
This paper develops a self-consistent theoretical framework to predict intrinsic timescales of neuronal activity in spiking neural networks, accounting for neuron and network properties, validated through simulations across various models.
Contribution
It extends dynamic mean-field theory to spiking networks, providing analytical solutions for intrinsic timescales and activity statistics in biologically realistic models.
Findings
Accurate predictions of neuron-level autocorrelation times.
Analytical solutions for firing rate distributions and power spectra.
Validation of theory through simulations of different neuron models.
Abstract
A complex interplay of single-neuron properties and the recurrent network structure shapes the activity of cortical neurons. The single-neuron activity statistics differ in general from the respective population statistics, including spectra and, correspondingly, autocorrelation times. We develop a theory for self-consistent second-order single-neuron statistics in block-structured sparse random networks of spiking neurons. In particular, the theory predicts the neuron-level autocorrelation times, also known as intrinsic timescales, of the neuronal activity. The theory is based on an extension of dynamic mean-field theory from rate networks to spiking networks, which is validated via simulations. It accounts for both static variability, e.g. due to a distributed number of incoming synapses per neuron, and temporal fluctuations of the input. We apply the theory to balanced random…
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