pqrBayes:Bayesian Penalized Quantile Regression
Bayesian regularized quantile regression utilizing sparse priors to impose exact sparsity leads to efficient Bayesian
shrinkage estimation, variable selection and statistical
inference. In this package, we have implemented robust Bayesian
variable selection with spike-and-slab priors under
high-dimensional linear regression models (Fan et al. (2024)
<doi:10.3390/e26090794> and Ren et al. (2023)
<doi:10.1111/biom.13670>), and regularized quantile varying
coefficient models (Zhou et al.(2023)
<doi:10.1016/j.csda.2023.107808>). In particular, valid robust
Bayesian inferences under both models in the presence of
heavy-tailed errors can be validated on finite samples. The
Markov Chain Monte Carlo (MCMC) algorithms of the proposed and
alternative models are implemented in C++.