Time-dependent maximum entropy model for populations of retinal ganglion cells
Geoffroy Delamare, Ulisse Ferrari

TL;DR
This paper introduces a time-dependent maximum entropy model for retinal ganglion cell populations, improving upon the standard inverse Ising model by incorporating temporal biases to better capture long-range stimulus correlations and network interactions.
Contribution
It develops a temporal extension of the inverse Ising model that accurately models retinal activity under diverse stimulus correlations, revealing subpopulation structures.
Findings
Standard inverse Ising model fails for long-range stimuli
Temporal biases improve model accuracy for all stimulus types
Retinal architecture consists of weakly interacting subpopulations
Abstract
The inverse Ising model is used in computational neuroscience to infer probability distributions of the synchronous activity of large neuronal populations. This method allows for finding the Boltzmann distribution with single neuron biases and pairwise interactions that maximizes the entropy and reproduces the empirical statistics of the recorded neuronal activity. Here we apply this strategy to large populations of retinal output neurons (ganglion cells) of different types, stimulated by multiple visual stimuli with their own statistics. The activity of retinal output neurons is driven by both the inputs from upstream neurons and the recurrent connections. We first apply the standard inverse Ising model approach, and show that it accounts well for the system's collective behavior when the input visual stimulus has short-ranged spatial correlations, but fails for long-ranged ones. This…
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