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pdp

Overview

pdp is an R package for constructing partial dependence plots (PDPs) and individual conditional expectation (ICE) curves. PDPs and ICE curves are part of a larger framework referred to as interpretable machine learning (IML), which also includes (but not limited to) variable importance plots (VIPs). While VIPs (available in the R package vip) help visualize feature impact (either locally or globally), PDPs and ICE curves help visualize feature effects. An in-progress, but comprehensive, overview of IML can be found at the following URL: https://github.com/christophM/interpretable-ml-book.

A detailed introduction to pdp has been published in The R Journal: “pdp: An R Package for Constructing Partial Dependence Plots”, https://journal.r-project.org/archive/2017/RJ-2017-016/index.html. You can track development at https://github.com/bgreenwell/pdp. To report bugs or issues, contact the main author directly or submit them to https://github.com/bgreenwell/pdp/issues. For additional documentation and examples, visit the package website.

As of right now, pdp exports four functions:

  • partial() - compute partial dependence functions and individual conditional expectations (i.e., objects of class "partial" and "ice", respectively) from various fitted model objects;

  • plotPartial()" - construct lattice-based PDPs and ICE curves;

  • autoplot() - construct ggplot2-based PDPs and ICE curves;

  • topPredictors() extract most “important” predictors from various types of fitted models. (Will soon be replaced by functionality from vip.)

Installation

# The easiest way to get pdp is to install it from CRAN:
install.packages("pdp")

# Alternatively, you can install the development version from GitHub:
if (!requireNamespace("devtools")) {
  install.packages("devtools")
}
devtools::install_github("bgreenwell/pdp")

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Version

Install

install.packages('pdp')

Monthly Downloads

8,653

Version

0.7.0

License

GPL (>= 2)

Issues

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Stars

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Maintainer

Brandon Greenwell

Last Published

August 27th, 2018

Functions in pdp (0.7.0)

progress_progress

Progress bar
topPredictors

Extract Most "Important" Predictors (Experimental)
grid.arrange

Arrange multiple grobs on a page
pdp

pdp: A general framework for constructing partial dependence (i.e., marginal effect) plots from various types machine learning models in R.
pima

Pima Indians Diabetes Data
partial

Partial Dependence Functions
trellis.last.object

Retrieve the last trellis object
plotPartial

Plotting Partial Dependence Functions
%>%

Pipe operator
autoplot.partial

Plotting Partial Dependence Functions
boston

Boston Housing Data