On Bayesian Generalized Additive Models
Generalized additive models (GAMs) provide a way to blend parametric and non-parametric (function approximation) techniques together, making them flexible tools suitable for many modeling problems. For instance, GAMs can be used to introduce flexibility to standard linear regression models, to expre...
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Zusammenfassung: | Generalized additive models (GAMs) provide a way to blend parametric and
non-parametric (function approximation) techniques together, making them
flexible tools suitable for many modeling problems. For instance, GAMs can be
used to introduce flexibility to standard linear regression models, to express
"almost linear" behavior for a phenomenon. A need for GAMs often arises also in
physical models, where the model given by theory is an approximation of
reality, and one wishes to express the coefficients as functions instead of
constants. In this paper, we discuss GAMs from the Bayesian perspective,
focusing on linear additive models, where the final model can be formulated as
a linear-Gaussian system. We discuss Gaussian Processes (GPs) and local basis
function approaches for describing the unknown functions in GAMs, and
techniques for specifying prior distributions for them, including spatially
varying smoothness. GAMs with both univariate and multivariate functions are
discussed. Hyperparameter estimation techniques are presented in order to
alleviate the tuning problems related to GAM models. Implementations of all the
examples discussed in the paper are made available. |
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DOI: | 10.48550/arxiv.2303.02626 |