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grpnet (version 0.9)

Group Elastic Net Regularized GLMs and GAMs

Description

Efficient algorithms for fitting generalized linear and additive models with group elastic net penalties as described in Helwig (2025) . Implements group LASSO, group MCP, and group SCAD with an optional group ridge penalty. Computes the regularization path for linear regression (gaussian), multivariate regression (multigaussian), Huberized support vector machines (hsvm), logistic regression (binomial), multinomial logistic regression (multinomial), log-linear count regression (poisson and negative.binomial), and log-linear continuous regression (gamma and inverse gaussian). Supports default and formula methods for model specification, k-fold cross-validation for tuning the regularization parameters, and nonparametric regression via tensor product reproducing kernel (smoothing spline) basis function expansion.

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Version

Install

install.packages('grpnet')

Monthly Downloads

448

Version

0.9

License

GPL (>= 2)

Maintainer

Nathaniel Helwig

Last Published

May 1st, 2025

Functions in grpnet (0.9)

row.kronecker

Row-Wise Kronecker Product
print

S3 'print' Methods for grpnet
predict.cv.grpnet

Predict Method for cv.grpnet Fits
predict.grpnet

Predict Method for grpnet Fits
rk

Reproducing Kernel Basis
visualize.penalty

Plots grpnet Penalty Function or its Derivative
visualize.shrink

Plots grpnet Shrinkage Operator or its Estimator
rk.model.matrix

Construct Design Matrices via Reproducing Kernels
StartupMessage

Startup Message for grpnet
internals-grpnet

Internal 'grpnet' Functions
auto

Auto MPG Data Set
cv.compare

Compare Multiple cv.grpnet Solutions
coef

Extract Coefficients for cv.grpnet and grpnet Fits
grpnet

Fit a Group Elastic Net Regularized GLM/GAM
family.grpnet

Prepare 'family' Argument for grpnet
cv.grpnet

Cross-Validation for grpnet
plot.grpnet

Plot Regularization Path for grpnet Fits
plot.cv.grpnet

Plot Cross-Validation Curve for cv.grpnet Fits