Noise Suppression and Surplus Synchrony by Coincidence Detection
Matthias Schultze-Kraft, Markus Diesmann, Sonja Gr\"un, Moritz Helias

TL;DR
This paper investigates how cortical neurons transmit correlated inputs and how synchrony and intrinsic connectivity influence spike timing, revealing non-linear effects that enhance output correlation beyond input levels.
Contribution
It extends analytical methods to model spike synchrony and demonstrates how non-linear neuronal responses amplify correlations in cortical networks.
Findings
Output correlation can exceed input correlation due to non-linear responses.
Synchrony in inputs significantly increases spike timing correlations.
The study identifies regimes where linear and non-linear effects dominate.
Abstract
The functional significance of correlations between action potentials of neurons is still a matter of vivid debates. In particular it is presently unclear how much synchrony is caused by afferent synchronized events and how much is intrinsic due to the connectivity structure of cortex. The available analytical approaches based on the diffusion approximation do not allow to model spike synchrony, preventing a thorough analysis. Here we theoretically investigate to what extent common synaptic afferents and synchronized inputs each contribute to closely time-locked spiking activity of pairs of neurons. We employ direct simulation and extend earlier analytical methods based on the diffusion approximation to pulse-coupling, allowing us to introduce precisely timed correlations in the spiking activity of the synaptic afferents. We investigate the transmission of correlated synaptic input…
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