Non-linear regression models for behavioral and neural data analysis
Regression models are popular tools in empirical sciences to infer the influence of a set of variables onto a dependent variable given an experimental dataset. In neuroscience and cognitive psychology, Generalized Linear Models (GLMs) -including linear regression, logistic regression, and Poisson GL...
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| Main Authors | , |
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| Format | Journal Article |
| Language | English |
| Published |
03.02.2020
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| Subjects | |
| Online Access | Get full text |
| DOI | 10.48550/arxiv.2002.00920 |
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| Summary: | Regression models are popular tools in empirical sciences to infer the
influence of a set of variables onto a dependent variable given an experimental
dataset. In neuroscience and cognitive psychology, Generalized Linear Models
(GLMs) -including linear regression, logistic regression, and Poisson GLM- is
the regression model of choice to study the factors that drive participant's
choices, reaction times and neural activations. These methods are however
limited as they only capture linear contributions of each regressors. Here, we
introduce an extension of GLMs called Generalized Unrestricted Models (GUMs),
which allows to infer a much richer set of contributions of the regressors to
the dependent variable, including possible interactions between the regressors.
In a GUM, each regressor is passed through a linear or nonlinear function, and
the contribution of the different resulting transformed regressors can be
summed or multiplied to generate a predictor for the dependent variable. We
propose a Bayesian treatment of these models in which we endow functions with
Gaussian Process priors, and we present two methods to compute a posterior over
the functions given a dataset: the Laplace method and a sparse variational
approach, which scales better for large dataset. For each method, we assess the
quality of the model estimation and we detail how the hyperparameters (defining
for example the expected smoothness of the function) can be fitted. Finally, we
illustrate the power of the method on a behavioral dataset where subjects
reported the average perceived orientation of a series of gratings. The method
allows to recover the mapping of the grating angle onto perceptual evidence for
each subject, as well as the impact of the grating based on its position.
Overall, GUMs provides a very rich and flexible framework to run nonlinear
regression analysis in neuroscience, psychology, and beyond. |
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| DOI: | 10.48550/arxiv.2002.00920 |