Sparse High-Dimensional Linear Regression with PROBE
Function for fitting the empirical Bayes portion of the E-step
Function for fitting the initial part of the M-step
Obtaining predictions, confidence intervals and prediction intervals f...
probe: Sparse High-Dimensional Linear Regression with PROBE
Fitting PaRtitiOned empirical Bayes Ecm (PROBE) algorithm to sparse hi...
Fitting PaRtitiOned empirical Bayes Ecm (PROBE) algorithm to sparse hi...
Implements an efficient and powerful Bayesian approach for sparse high-dimensional linear regression. It uses minimal prior assumptions on the parameters through plug-in empirical Bayes estimates of hyperparameters. An efficient Parameter-Expanded Expectation-Conditional-Maximization (PX-ECM) algorithm estimates maximum a posteriori (MAP) values of regression parameters and variable selection probabilities. The PX-ECM results in a robust computationally efficient coordinate-wise optimization, which adjusts for the impact of other predictor variables. The E-step is motivated by the popular two-group approach to multiple testing. The result is a PaRtitiOned empirical Bayes Ecm (PROBE) algorithm applied to sparse high-dimensional linear regression, implemented using one-at-a-time or all-at-once type optimization. More information can be found in McLain, Zgodic, and Bondell (2022) <arXiv:2209.08139>.