Parametric Copula-GP model for analyzing multidimensional neuronal and
behavioral relationships
- URL: http://arxiv.org/abs/2008.01007v1
- Date: Mon, 3 Aug 2020 16:44:29 GMT
- Title: Parametric Copula-GP model for analyzing multidimensional neuronal and
behavioral relationships
- Authors: Nina Kudryashova, Theoklitos Amvrosiadis, Nathalie Dupuy, Nathalie
Rochefort, Arno Onken
- Abstract summary: We propose a parametric copula model which separates the statistics of the individual variables from their dependence structure.
We use a Bayesian framework with Gaussian Process (GP) priors over copula parameters, conditioned on a continuous task-related variable.
Our framework is particularly useful for the analysis of complex multidimensional relationships between neuronal, sensory and behavioral data.
- Score: 2.624902795082451
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 model is not possible, our Copula-GP model
is still able to provide reasonable information estimates, close to the ground
truth and comparable to those obtained with a neural network estimator.
Finally, we apply our framework to real neuronal and behavioral recordings
obtained in awake mice. We demonstrate the ability of our framework to
1) produce accurate and interpretable bivariate models for the analysis of
inter-neuronal noise correlations or behavioral modulations;
2) expand to more than 100 dimensions and measure information content in the
whole-population statistics. These results demonstrate that the Copula-GP
framework is particularly useful for the analysis of complex multidimensional
relationships between neuronal, sensory and behavioral data.
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