Joint statistics of strongly correlated neurons via dimensionality reduction

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Abstract

The relative timing of action potentials in neurons recorded from local cortical networks often shows a non-trivial dependence, which is then quantified by cross-correlation functions. Theoretical models emphasize that such spike train correlations are an inevitable consequence of two neurons being part of the same network and sharing some synaptic input. For non-linear neuron models, however, explicit correlation functions are difficult to compute analytically, and perturbative methods work only for weak shared input. In order to treat strong correlations, we suggest here an alternative non-perturbative method. Specifically, we study the case of two leaky integrate-and-fire neurons with strong shared input. Correlation functions derived from simulated spike trains fit our theoretical predictions very accurately. Using our method, we computed the non-linear correlation transfer as well as correlation functions that are asymmetric due to inhomogeneous intrinsic parameters or unequal input.

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APA

Deniz, T., & Rotter, S. (2017). Joint statistics of strongly correlated neurons via dimensionality reduction. Journal of Physics A: Mathematical and Theoretical, 50(25). https://doi.org/10.1088/1751-8121/aa677e

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