fatmasevinck/enetLTS: Robust and Sparse Methods for High Dimensional Linear and Binary and Multinomial Regression

Fully robust versions of the elastic net estimator are introduced for linear and binary and multinomial regression, in particular high dimensional data. The algorithm searches for outlier free subsets on which the classical elastic net estimators can be applied. A reweighting step is added to improve the statistical efficiency of the proposed estimators. Selecting appropriate tuning parameters for elastic net penalties are done via cross-validation.

Getting started

Package details

AuthorFatma Sevinc KURNAZ and Irene HOFFMANN and Peter FILZMOSER
MaintainerFatma Sevinc KURNAZ <fatmasevinckurnaz@gmail.com>
LicenseGPL
Version1.1.0
Package repositoryView on GitHub
Installation Install the latest version of this package by entering the following in R:
install.packages("remotes")
remotes::install_github("fatmasevinck/enetLTS")
fatmasevinck/enetLTS documentation built on Jan. 21, 2023, 10:35 p.m.