easy.glmnet

Functions to Simplify the Use of 'glmnet' for Machine Learning

CRAN Package

Provides several functions to simplify using the 'glmnet' package: converting data frames into matrices ready for 'glmnet'; b) imputing missing variables multiple times; c) fitting and applying prediction models straightforwardly; d) assigning observations to folds in a balanced way; e) cross-validate the models; f) selecting the most representative model across imputations and folds; and g) getting the relevance of the model regressors; as described in several publications: Solanes et al. (2022) doi:10.1038/s41537-022-00309-w, Palau et al. (2023) doi:10.1016/j.rpsm.2023.01.001, Sobregrau et al. (2024) doi:10.1016/j.jpsychores.2024.111656.

  • Version1.0
  • R versionunknown
  • LicenseGPL-3
  • Needs compilation?No
  • Last release09/11/2024

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  • Imports4 packages
  • Suggests1 package