Parametric Copula-GP model for analyzing multidimensional neuronal and behavioral relationships
Nina Kudryashova, Theoklitos Amvrosiadis, Nathalie Dupuy, Nathalie, Rochefort, Arno Onken

TL;DR
This paper introduces a Bayesian copula model with Gaussian Process priors to analyze high-dimensional neuronal and behavioral data, effectively capturing complex dependencies and estimating information content across multiple variables.
Contribution
The novel Copula-GP framework combines vine copula constructions with Gaussian Process priors, enabling scalable, interpretable analysis of multidimensional neural and behavioral relationships.
Findings
Accurately estimates mutual information in synthetic data.
Provides interpretable bivariate models for neuronal and behavioral correlations.
Scales to over 100 dimensions for whole-population analysis.
Abstract
One of the main challenges in current systems neuroscience is the analysis of high-dimensional neuronal and behavioral data that are characterized by different statistics and timescales of the recorded variables. We propose a parametric copula model which separates the statistics of the individual variables from their dependence structure, and escapes the curse of dimensionality by using vine copula constructions. We use a Bayesian framework with Gaussian Process (GP) priors over copula parameters, conditioned on a continuous task-related variable. We validate the model on synthetic data and compare its performance in estimating mutual information against the commonly used non-parametric algorithms. Our model provides accurate information estimates when the dependencies in the data match the parametric copulas used in our framework. When the exact density estimation with a parametric…
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Taxonomy
TopicsNeural dynamics and brain function · Gene Regulatory Network Analysis · Advanced Chemical Sensor Technologies
MethodsGaussian Process
