BMIselect: Bayesian MI-LASSO for Variable Selection on Multiply-Imputed Datasets

Provides a suite of Bayesian MI-LASSO for variable selection methods for multiply-imputed datasets. The package includes four Bayesian MI-LASSO models using shrinkage (Multi-Laplace, Horseshoe, ARD) and Spike-and-Slab (Spike-and-Laplace) priors, along with tools for model fitting via MCMC, four-step projection predictive variable selection, and hyperparameter calibration. Methods are suitable for both continuous and binary covariates under missing-at-random or missing-completely-at-random assumptions. See Zou, J., Wang, S. and Chen, Q. (2025), Bayesian MI-LASSO for Variable Selection on Multiply-Imputed Data. ArXiv, 2211.00114. <doi:10.48550/arXiv.2211.00114> for more details. We also provide the frequentist`s MI-LASSO function.

Package details

AuthorJungang Zou [aut, cre], Sijian Wang [aut], Qixuan Chen [aut]
MaintainerJungang Zou <jungang.zou@gmail.com>
LicenseApache License (>= 2)
Version1.0.3
Package repositoryView on CRAN
Installation Install the latest version of this package by entering the following in R:
install.packages("BMIselect")

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BMIselect documentation built on Aug. 25, 2025, 5:11 p.m.