This title appears in the Scientific Report : 2013 

A unified view on weakly correlated recurrent networks
Grytskyy, Dmytro (Corresponding author)
Tetzlaff, Tom / Diesmann, Markus / Helias, Moritz
Theoretical Neuroscience; IAS-6
Computational and Systems Neuroscience; INM-6
Frontiers in computational neuroscience, 7 (2013) 131, S. 1-19
Lausanne Frontiers Research Foundation 2013
10.3389/fncom.2013.00131
Journal Article
Helmholtz Alliance on Systems Biology
Brain-inspired multiscale computation in neuromorphic hybrid systems
Signalling Pathways and Mechanisms in the Nervous System
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OpenAccess
Please use the identifier: http://hdl.handle.net/2128/5709 in citations.
Please use the identifier: http://dx.doi.org/10.3389/fncom.2013.00131 in citations.
The diversity of neuron models used in contemporary theoretical neuroscience to investigate specific properties of covariances in the spiking activity raises the question how these models relate to each other. In particular it is hard to distinguish between generic properties of covariances 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 (LIF) model, and the Hawkes process. We show that linear approximation maps each of these models to either of two classes of linear rate models (LRM), including the Ornstein–Uhlenbeck process (OUP) as a special case. The distinction between both classes is the location of additive noise in the rate dynamics, which is located 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 output noise it separates into an echo term and a term due to correlated input. The unified framework enables us to transfer results between models. For example, we generalize the binary model and the Hawkes process to the situation with synaptic conduction delays and simplify derivations for established results. Our approach is applicable to general network structures and suitable for the calculation of population averages. The derived averages are exact for fixed out-degree network architectures and approximate for fixed in-degree. We demonstrate how taking into account fluctuations in the linearization procedure increases the accuracy of the effective theory and we explain the class dependent differences between covariances in the time and the frequency domain. Finally we show that the oscillatory instability emerging in networks of LIF models with delayed inhibitory feedback is a model-invariant feature: the same structure of poles in the complex frequency plane determines the population power spectra.