vip provides a unified framework for constructing
variable importance plots from virtually any machine learning model in
R. Instead of juggling different importance() functions
across packages, vip gives you one consistent interface for
interpretable ML.
# Install from CRAN (stable)
install.packages("vip")
# Install development version (latest features)
# install.packages("pak")
pak::pak("koalaverse/vip")library(vip)
library(randomForest)
# Fit a model
model <- randomForest(Species ~ ., data = iris)
# Get importance scores
vi_scores <- vi(model)
print(vi_scores)
#> # A tibble: 4 × 2
#> Variable Importance
#> <chr> <dbl>
#> 1 Petal.Length 32.4
#> 2 Petal.Width 31.3
#> 3 Sepal.Length 9.51
#> 4 Sepal.Width 6.75
# Create a beautiful plot
vip(model)| Method | Description | Use case | Function |
|---|---|---|---|
| Model-specific | Extract built-in importance | Fast, model-native | vi(model, method = "model") |
| Permutation | Shuffle features, measure impact | Model-agnostic, robust | vi(model, method = "permute") |
| Shapley values | Game theory attribution | Detailed explanations | vi(model, method = "shap") |
| Variance-based | FIRM approach | Feature ranking | vi(model, method = "firm") |
Tree-based models - randomForest • ranger • xgboost • lightgbm • gbm • C50 • Cubist • rpart • party • partykit
Linear models - glmnet • earth (MARS) • Base R (lm, glm)
Neural networks - nnet • neuralnet • h2o • RSNNS
Meta-frameworks - caret • tidymodels • parsnip • workflows • mlr • mlr3 • sparklyr
Specialized models - pls • mixOmics (Bioconductor) • And many more…
library(ranger)
# Fit model
rf_model <- ranger(mpg ~ ., data = mtcars, importance = "none")
# Permutation importance with custom metric
vi_perm <- vi(
rf_model,
method = "permute",
train = mtcars,
target = "mpg",
metric = "rmse",
nsim = 50, # 50 permutations for stability
parallel = TRUE # Speed up with parallel processing
)
# Create enhanced plot
vip(vi_perm, num_features = 10, geom = "point") +
labs(title = "Permutation-based Variable Importance",
subtitle = "RMSE metric, 50 permutations") +
theme_minimal()library(xgboost)
# Prepare data
X <- data.matrix(subset(mtcars, select = -mpg))
y <- mtcars$mpg
# Fit XGBoost model
xgb_model <- xgboost(data = X, label = y, nrounds = 100, verbose = 0)
# SHAP-based importance
vi_shap <- vi(
xgb_model,
method = "shap",
train = X,
nsim = 30
)
# Beautiful SHAP plot
vip(vi_shap, geom = "col", aesthetics = list(fill = "steelblue", alpha = 0.8)) +
labs(title = "SHAP-based Variable Importance") +
theme_light()We welcome contributions! Here’s how to get involved:
# Clone the repo
git clone https://github.com/koalaverse/vip.git
cd vip
# Open in RStudio or your favorite editorWe use tinytest for lightweight, reliable testing:
# Run all tests
tinytest::test_package("vip")
# Test specific functionality
tinytest::run_test_file("inst/tinytest/test_vip.R")git checkout -b feature/awesome-featureR CMD check and testsAdding support for new models is straightforward:
# Add S3 method to R/vi_model.R
vi_model.your_model_class <- function(object, ...) {
# Extract importance from your model
importance_scores <- your_model_importance_function(object)
# Return as tibble
tibble::tibble(
Variable = names(importance_scores),
Importance = as.numeric(importance_scores)
)
}If you use vip in your research, please cite:
@article{greenwell2020variable,
title={Variable Importance Plots—An Introduction to the vip Package},
author={Greenwell, Brandon M and Boehmke, Bradley C},
journal={The R Journal},
volume={12},
number={1},
pages={343--366},
year={2020},
doi={10.32614/RJ-2020-013}
}GPL (>= 2) © Brandon M. Greenwell, Brad Boehmke
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