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 modeled 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...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
In quantile regression, various quantiles of a response variable Y are modelled as functions of cova...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
This article describes an R package bqror that estimates Bayesian quantile regression for ordinal mo...
We introduce a set of new Gibbs sampler for Bayesian analysis of quantile re-gression model. The new...
The R package spikeSlabGAM implements Bayesian variable selection, model choice, and regularized est...
We use Bayesian model selection paradigms, such as group least absolute shrinkage and selection oper...
BSquare in an R package to conduct Bayesian quantile regression for continuous, discrete, and censor...
The cgam package contains routines to fit the generalized additive model where the components may be...
GAMLSS is a general framework for fitting regression type models where the distribution of the respo...
The Bayesian spectral analysis model (BSAM) is a powerful tool to deal with semiparametric methods i...
Quantile regression seeks to extend classical least square regression by modeling quantiles of the c...
The BUGS language offers a very flexible way of specifying complex statistical models for the purpos...
There is now a large literature on optimal predictive model selection. Bayesian methodology based on...
In this paper we introduce a novel model for Gaussian process (GP) regression in the fully Bayesian ...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
In quantile regression, various quantiles of a response variable Y are modelled as functions of cova...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
This article describes an R package bqror that estimates Bayesian quantile regression for ordinal mo...
We introduce a set of new Gibbs sampler for Bayesian analysis of quantile re-gression model. The new...
The R package spikeSlabGAM implements Bayesian variable selection, model choice, and regularized est...
We use Bayesian model selection paradigms, such as group least absolute shrinkage and selection oper...
BSquare in an R package to conduct Bayesian quantile regression for continuous, discrete, and censor...
The cgam package contains routines to fit the generalized additive model where the components may be...
GAMLSS is a general framework for fitting regression type models where the distribution of the respo...
The Bayesian spectral analysis model (BSAM) is a powerful tool to deal with semiparametric methods i...
Quantile regression seeks to extend classical least square regression by modeling quantiles of the c...
The BUGS language offers a very flexible way of specifying complex statistical models for the purpos...
There is now a large literature on optimal predictive model selection. Bayesian methodology based on...
In this paper we introduce a novel model for Gaussian process (GP) regression in the fully Bayesian ...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
In quantile regression, various quantiles of a response variable Y are modelled as functions of cova...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...