qgam: Bayesian non-parametric quantile regression modelling in R
Generalized additive models (GAMs) are flexible non-linear regression models, which can be fitted efficiently using the approximate Bayesian methods provided by the mgcv R package. While the GAM methods provided by mgcv are based on the assumption that the response distribution is modelled parametri...
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Zusammenfassung: | Generalized additive models (GAMs) are flexible non-linear regression models,
which can be fitted efficiently using the approximate Bayesian methods provided
by the mgcv R package. While the GAM methods provided by mgcv are based on the
assumption that the response distribution is modelled parametrically, here we
discuss more flexible methods that do not entail any parametric assumption. In
particular, this article introduces the qgam package, which is an extension of
mgcv providing fast calibrated Bayesian methods for fitting quantile GAMs
(QGAMs) in R. QGAMs are based on a smooth version of the pinball loss of
Koenker (2005), rather than on a likelihood function, hence jointly achieving
satisfactory accuracy of the quantile point estimates and coverage of the
corresponding credible intervals requires adopting the specialized Bayesian
fitting framework of Fasiolo, Wood, Zaffran, Nedellec, and Goude (2020b). Here
we detail how this framework is implemented in qgam and we provide examples
illustrating how the package should be used in practice. |
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DOI: | 10.48550/arxiv.2007.03303 |