A unified view on weakly correlated recurrent networks
Dmytro Grytskyy, Tom Tetzlaff, Markus Diesmann, Moritz Helias

TL;DR
This paper presents a unified theoretical framework for analyzing pairwise covariances in various weakly correlated recurrent neural network models, enabling transfer of results and generalizations across models.
Contribution
It introduces a linear approximation mapping different neuron models to two classes of linear rate models, facilitating unified analysis of covariances and stability properties.
Findings
Unified framework for binary, leaky integrate-and-fire, and Hawkes models.
Closed-form solutions for covariances in both classes.
Oscillatory instability is a model-invariant feature.
Abstract
The diversity of neuron models used in contemporary theoretical neuroscience to investigate specific properties of covariances raises the question how these models relate to each other. In particular it is hard to distinguish between generic properties and peculiarities due to the abstracted model. Here we present a unified view on pairwise covariances in recurrent networks in the irregular regime. We consider the binary neuron model, the leaky integrate-and-fire model, and the Hawkes process. We show that linear approximation maps each of these models to either of two classes of linear rate models, including the Ornstein-Uhlenbeck process as a special case. The classes differ in the location of additive noise in the rate dynamics, which is on the output side for spiking models and on the input side for the binary model. Both classes allow closed form solutions for the covariance. For…
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