Package: joinet Version: 0.0.8 Title: Multivariate Elastic Net Regression Description: Implements high-dimensional multivariate regression by stacked generalisation (Wolpert 1992 ). For positively correlated outcomes, a single multivariate regression is typically more predictive than multiple univariate regressions. Includes functions for model fitting, extracting coefficients, outcome prediction, and performance measurement. If required, install MRCE or remMap from GitHub (, ). Depends: R (>= 3.0.0) Imports: glmnet, palasso, cornet Suggests: knitr, rmarkdown, testthat, MASS Enhances: mice, earth, spls, MRCE, remMap, MultivariateRandomForest, SiER, mcen, GPM, RMTL, MTPS Authors@R: person("Armin","Rauschenberger",email="armin.rauschenberger@uni.lu",role=c("aut","cre")) VignetteBuilder: knitr License: GPL-3 LazyData: true Language: en-GB RoxygenNote: 7.1.1 URL: https://github.com/rauschenberger/joinet BugReports: https://github.com/rauschenberger/joinet/issues