Reconstruction of recurrent synaptic connectivity of thousands of neurons from simulated spiking activity
Yury V. Zaytsev, Abigail Morrison, Moritz Deger

TL;DR
This paper introduces a scalable method for reconstructing large recurrent neuronal networks from parallel spike train data using maximum likelihood estimation, enabling detailed connectivity analysis of thousands of neurons.
Contribution
The authors develop a computationally efficient, parallelized approach for reconstructing large-scale recurrent neural networks from spike data, overcoming previous limitations in network size and stability.
Findings
Achieved less than 1% misclassification error in simulated networks.
Successfully reconstructed a hidden synfire chain within a random network.
Method is robust under less ideal conditions, maintaining low error rates.
Abstract
Dynamics and function of neuronal networks are determined by their synaptic connectivity. Current experimental methods to analyze synaptic network structure on the cellular level, however, cover only small fractions of functional neuronal circuits, typically without a simultaneous record of neuronal spiking activity. Here we present a method for the reconstruction of large recurrent neuronal networks from thousands of parallel spike train recordings. We employ maximum likelihood estimation of a generalized linear model of the spiking activity in continuous time. For this model the point process likelihood is concave, such that a global optimum of the parameters can be obtained by gradient ascent. Previous methods, including those of the same class, did not allow recurrent networks of that order of magnitude to be reconstructed due to prohibitive computational cost and numerical…
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