shap.plot.summary.wrap2 {SHAPforxgboost} | R Documentation |
A wrapped function to make summary plot from given SHAP values matrix
Description
shap.plot.summary.wrap2
wraps up function shap.prep
and
shap.plot.summary
. Since SHAP matrix could be returned from
cross-validation instead of only one model, here the wrapped
shap.prep
takes the SHAP score matrix shap_score
as input
Usage
shap.plot.summary.wrap2(shap_score, X, top_n, dilute = FALSE)
Arguments
shap_score |
the SHAP values dataset, could be obtained by
|
X |
the dataset of predictors used for calculating SHAP values |
top_n |
how many predictors you want to show in the plot (ranked) |
dilute |
being numeric or logical (TRUE/FALSE), it aims to help make the test plot for large amount of data faster. If dilute = 5 will plot 1/5 of the data. If dilute = TRUE or a number, will plot at most half points per feature, so the plotting won't be too slow. If you put dilute too high, at least 10 points per feature would be kept. If the dataset is too small after dilution, will just plot all the data |
Examples
data("iris")
X1 = as.matrix(iris[,-5])
mod1 = xgboost::xgboost(
data = X1, label = iris$Species, gamma = 0, eta = 1,
lambda = 0, nrounds = 1, verbose = FALSE, nthread = 1)
# shap.values(model, X_dataset) returns the SHAP
# data matrix and ranked features by mean|SHAP|
shap_values <- shap.values(xgb_model = mod1, X_train = X1)
shap_values$mean_shap_score
shap_values_iris <- shap_values$shap_score
# shap.prep() returns the long-format SHAP data from either model or
shap_long_iris <- shap.prep(xgb_model = mod1, X_train = X1)
# is the same as: using given shap_contrib
shap_long_iris <- shap.prep(shap_contrib = shap_values_iris, X_train = X1)
# **SHAP summary plot**
shap.plot.summary(shap_long_iris, scientific = TRUE)
shap.plot.summary(shap_long_iris, x_bound = 1.5, dilute = 10)
# Alternatives options to make the same plot:
# option 1: from the xgboost model
shap.plot.summary.wrap1(mod1, X = as.matrix(iris[,-5]), top_n = 3)
# option 2: supply a self-made SHAP values dataset
# (e.g. sometimes as output from cross-validation)
shap.plot.summary.wrap2(shap_score = shap_values_iris, X = X1, top_n = 3)