xtune: Regularized Regression with Feature-Specific Penalties
Integrating External Information
Extends standard penalized regression (Lasso, Ridge, and Elastic-net) to allow feature-specific shrinkage based on external information with the goal of achieving a better prediction accuracy and variable selection. Examples of external information include the grouping of predictors, prior knowledge of biological importance, external p-values, function annotations, etc. The choice of multiple tuning parameters is done using an Empirical Bayes approach. A majorization-minimization algorithm is employed for implementation. 
| Version: | 2.0.0 | 
| Depends: | R (≥ 2.10) | 
| Imports: | glmnet, stats, crayon, selectiveInference, lbfgs | 
| Suggests: | knitr, numDeriv, rmarkdown, testthat (≥ 3.0.0), covr, pROC | 
| Published: | 2023-06-18 | 
| DOI: | 10.32614/CRAN.package.xtune | 
| Author: | Jingxuan He [aut, cre],
  Chubing Zeng [aut] | 
| Maintainer: | Jingxuan He  <hejingxu at usc.edu> | 
| License: | MIT + file LICENSE | 
| URL: | https://github.com/JingxuanH/xtune | 
| NeedsCompilation: | no | 
| Materials: | README, NEWS | 
| CRAN checks: | xtune results [issues need fixing before 2025-11-15] | 
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