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StepReg


  • An R package for stepwise regression analysis


StepReg is an R package that streamlines stepwise regression analysis by supporting multiple regression types, incorporating popular selection strategies, and offering essential metrics.

Key Features

  • Multiple Regression Types: Linear, logistic, Cox, Poisson, Gamma, and negative binomial regression
  • Selection Strategies: Forward selection, backward elimination, bidirectional elimination, and best subsets
  • Selection Metrics: AIC, AICc, BIC, CP, HQ, adjRsq, SL, SBC, IC(3/2), IC(1)
  • Advanced Features:
    • Strata variables for Cox regression
    • Continuous-nested-within-class effects
    • multivariable multiple linear stepwise regression
  • Multicollinearity Detection: Automatic detection and handling of multicollinearity
  • Visualization: Plot functions for variable selection processes
  • Reporting: Export results in various formats (HTML, DOCX, XLSX, PPTX)
  • Shiny App: Interactive web interface for non-programmers

Installation

Install from CRAN

pak::pkg_install("StepReg")

or

install.packages("StepReg")

Or install from GitHub

devtools::install_github("JunhuiLi1017/StepReg")

Quick Start

library(StepReg)

# Basic linear regression
data(mtcars)
formula <- mpg ~ .
res <- stepwise(
  formula = formula,
  data = mtcars,
  type = "linear",
  strategy = "bidirection",
  metric = "AIC"
)

# View results
res
summary(res$bidirection$AIC)

Advanced Features

Strata Variables in Cox Regression

library(survival)
data(lung)
lung$sex <- factor(lung$sex)

# Cox regression with strata
formula <- Surv(time, status) ~ age + sex + ph.ecog + strata(inst)
res <- stepwise(
  formula = formula,
  data = lung,
  type = "cox",
  strategy = "forward",
  metric = "AIC"
)

Continuous-Nested-Within-Class Effects

data(mtcars)
mtcars$am <- factor(mtcars$am)

# Nested effects
formula <- mpg ~ am + wt:am + disp:am + hp:am
res <- stepwise(
  formula = formula,
  data = mtcars,
  type = "linear",
  strategy = "bidirection",
  metric = "AIC"
)

Documentation

Shiny Application

Important Note

StepReg should NOT be used for statistical inference unless the variable selection process is explicitly accounted for, as it can compromise the validity of the results. This limitation does not apply when StepReg is used for prediction purposes.

Citation

If you use StepReg in your research, please cite:

citation("StepReg")

Questions?

Please raise an issue here.

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Version

Install

install.packages('StepReg')

Monthly Downloads

824

Version

1.6.0

License

MIT + file LICENSE

Maintainer

Junhui Li

Last Published

September 30th, 2025

Functions in StepReg (1.6.0)

affairs

Fair's Extramarital Affairs Data
print.StepReg

Print Stepwise Regression Results
report

Generate Stepwise Regression Report
StepRegShinyApp

Launch StepReg Shiny Application
plot.StepReg

Visualize Stepwise Regression Results
performance

Model Performance Summary Across Different Selection Strategies
creditCard

Credit Card Application Dataset
remission

Leukemia Remission Dataset
StepReg-package

StepReg: Stepwise Regression Analysis
stepwise

Stepwise Regression Model Selection
lung

NCCTG Lung Cancer Data
tobacco

Tobacco Leaf Chemical Composition Dataset