Learn R Programming

⚠️There's a newer version (4.1-8) of this package.Take me there.

Lasso and Elastic-Net Regularized Generalized Linear Models

We provide extremely efficient procedures for fitting the entire lasso or elastic-net regularization path for linear regression (gaussian), multi-task gaussian, logistic and multinomial regression models (grouped or not), Poisson regression and the Cox model. The algorithm uses cyclical coordinate descent in a path-wise fashion. Details may be found in Friedman, Hastie, and Tibshirani (2010), Simon et al. (2011), Tibshirani et al. (2012), Simon, Friedman, and Hastie (2013).

Version 3.0 is a major release with several new features, including:

  • Relaxed fitting to allow models in the path to be refit without regularization. CV will select from these, or from specified mixtures of the relaxed fit and the regular fit;
  • Progress bar to monitor computation;
  • Assessment functions for displaying performance of models on test data. These include all the measures available via cv.glmnet, as well as confusion matrices and ROC plots for classification models;
  • print methods for CV output;
  • Functions for building the x input matrix for glmnet that allow for one-hot-encoding of factor variables, appropriate treatment of missing values, and an option to create a sparse matrix if appropriate.
  • A function for fitting unpenalized a single version of any of the GLMs of glmnet.

Version 4.0 is a major release that allows for any GLM family, besides the built-in families.

References

Friedman, Jerome, Trevor Hastie, and Rob Tibshirani. 2010. “Regularization Paths for Generalized Linear Models via Coordinate Descent.” Journal of Statistical Software, Articles 33 (1): 1–22. https://doi.org/10.18637/jss.v033.i01.

Simon, Noah, Jerome Friedman, and Trevor Hastie. 2013. “A Blockwise Descent Algorithm for Group-Penalized Multiresponse and Multinomial Regression.”

Simon, Noah, Jerome Friedman, Trevor Hastie, and Rob Tibshirani. 2011. “Regularization Paths for Cox’s Proportional Hazards Model via Coordinate Descent.” Journal of Statistical Software, Articles 39 (5): 1–13. https://doi.org/10.18637/jss.v039.i05.

Tibshirani, Robert, Jacob Bien, Jerome Friedman, Trevor Hastie, Noah Simon, Jonathan Taylor, and Ryan J. Tibshirani. 2012. “Strong Rules for Discarding Predictors in Lasso-Type Problems.” Journal of the Royal Statistical Society: Series B (Statistical Methodology) 74 (2): 245–66. https://doi.org/10.1111/j.1467-9868.2011.01004.x.

Copy Link

Version

Install

install.packages('glmnet')

Monthly Downloads

160,579

Version

4.0

License

GPL-2

Maintainer

Trevor Hastie

Last Published

May 14th, 2020

Functions in glmnet (4.0)

elnet.fit

Solve weighted least squares (WLS) problem for a single lambda value
glmnet-internal

Internal glmnet functions
get_start

Get null deviance, starting mu and lambda max
predict.glmnetfit

Get predictions from a glmnetfit fit object
spelnet.fit

Solve weighted least squares (WLS) problem for a single lambda value
coef.glmnet

Extract coefficients from a glmnet object
predict.cv.glmnet

make predictions from a "cv.glmnet" object.
glmnet.measures

Display the names of the measures used in CV for different "glmnet" families
glmnet

fit a GLM with lasso or elasticnet regularization
glmnet-package

Elastic net model paths for some generalized linear models
spglmnet.fit

Fit a GLM with elastic net regularization for a single value of lambda
print.cv.glmnet

print a cross-validated glmnet object
obj_function

Elastic net objective function value
glmnet.path

Fit a GLM with elastic net regularization for a path of lambda values
glmnet.fit

Fit a GLM with elastic net regularization for a single value of lambda
na.replace

Replace the missing entries in a matrix columnwise with the entries in a supplied vector
plot.glmnet

plot coefficients from a "glmnet" object
pen_function

Elastic net penalty value
plot.cv.glmnet

plot the cross-validation curve produced by cv.glmnet
makeX

convert a data frame to a data matrix with one-hot encoding
glmnet.control

internal glmnet parameters
print.glmnet

print a glmnet object
rmult

Generate multinomial samples from a probability matrix
coxgrad

compute gradient for cox model
deviance.glmnet

Extract the deviance from a glmnet object
coxnet.deviance

compute deviance for cox model output
bigGlm

fit a glm with all the options in glmnet
beta_CVX

Simulated data for the glmnet vignette
Cindex

compute C index for a Cox model
cv.glmnet

Cross-validation for glmnet
dev_function

Elastic net deviance value
assess.glmnet

assess performance of a 'glmnet' object using test data.