A Bayesian method is presented for the nonparametric modeling of univariate and multivariate non-Gaussian response data. Data-adaptive multivariate regression splines are used where the number and location of the knot points are treated as random. The posterior model space is explored using a reversible-jump Markov chain Monte Carlo sampler. Computational difficulties are partly alleviated by introducing a random residual effect in the model that leaves many of the posterior conditional distributions of the model parameters in standard form. The use of the latent residual effect provides a convenient vehicle for modeling correlation in multivariate response data, and as such our method can be seen to generalize the seemingly unrelated regre...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
Spline smoothing in non- or semiparametric regression models is usually based on the roughness penal...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
A Bayesian method is presented for the nonparametric modeling of univariate and multivariate non-Gau...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
Spline smoothing in non- or semiparametric regression models is usually based on the roughness penal...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
A Bayesian method is presented for the nonparametric modeling of univariate and multivariate non-Gau...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
Generalized additive models (GAM) for modelling nonlinear effects of continuous covariates are now w...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
Spline smoothing in non- or semiparametric regression models is usually based on the roughness penal...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...