The ingredients
package is a collection of tools for assessment of feature importance and feature effects. It is imported and used to compute model explanations in multiple packages e.g. DALEX
, modelStudio
, arenar
.
The philosophy behind ingredients
explanations is described in the Explanatory Model Analysis: Explore, Explain, and Examine Predictive Models e-book. The ingredients
package is a part of DrWhy.AI universe.
Key functions:
feature_importance()
for assessment of global level feature importance,ceteris_paribus()
for calculation of the Ceteris Paribus / What-If Profiles (read more at https://ema.drwhy.ai/ceterisParibus.html),partial_dependence()
for Partial Dependence Plots,conditional_dependence()
for Conditional Dependence Plots also called M Plots,accumulated_dependence()
for Accumulated Local Effects Plots,aggregate_profiles()
andcluster_profiles()
for aggregation of Ceteris Paribus Profiles,calculate_oscillations()
for calculation of the Ceteris Paribus Oscillations (read more at https://ema.drwhy.ai/ceterisParibusOscillations.html),ceteris_paribus_2d()
for Ceteris Paribus 2D Profiles,- generic
print()
andplot()
for better usability of selected explanations, - generic
plotD3()
for interactive, D3 based explanations, - generic
describe()
for explanations in natural language.
# the easiest way to get ingredients is to install it from CRAN:
install.packages("ingredients")
# Or the the development version from GitHub:
# install.packages("devtools")
devtools::install_github("ModelOriented/ingredients")
feature_importance()
, ceteris_paribus()
and aggregated_profiles()
also work with D3:
see an example.
Work on this package was financially supported by the NCN Opus grant 2016/21/B/ST6/02176
.