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condvis2

The goal of condvis2 is to visualise prediction models via shiny. Predictions are generated from one or more model fits. Low-dimensional visualisations are constructed showing the relationship between the response and one or two (section) predictors, conditional on the remaining predictors. The section predictors and conditioning values are selected within the shiny app.

Installation

You can install condvis2 from github with:

# install.packages("devtools")
devtools::install_github("cbhurley/condvis2")

Example 1: A prediction model

This is a basic condvis example.

We will use the airquality data built in to R.

ozone <- na.omit(airquality)
fit <- loess(Ozone~Wind+Solar.R+Temp, data=ozone)
condvis(ozone, fit, sectionvars="Wind", conditionvars=c("Solar.R", "Temp"))

The result is shown in the screenshot below. It shows the loess prediction for Wind, conditional on values of the other two predictors.
Only observations whose Solar.R and Temp values are near (207,79) are shown. The user can move around the pink cross to see how the prediction varies.

Check out the vignette Introduction to condvis2 for more information and details.

Example 2: A density estimate

library(ks)
data(iris)
irisf <- kde(x=iris[,1:3])

condvis(data = iris, model = list(kde=irisf), 
        sectionvars= c("Sepal.Length", "Sepal.Width"), 
        conditionvars= "Petal.Length", density=T)

The result is shown in the screenshot below. It shows the estimated density of two variables conditional on the third.

References

Catherine B. Hurley, Mark O’Connell, Katarina Domijan. (2021) Interactive slice visualization for exploring machine learning models. arXiv 2101.06986.

Mark O’Connell, Catherine Hurley, Katarina Domijan. (2017) Conditional Visualization for Statistical Models: An Introduction to the condvis Package in R. Journal of Statistical Software 81(5) 1–20.

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Version

Install

install.packages('condvis2')

Monthly Downloads

286

Version

0.1.2

License

GPL (>= 2.0)

Issues

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Maintainer

Catherine Hurley

Last Published

September 14th, 2022

Functions in condvis2 (0.1.2)

fitPath

Constructs tours of data space based on fits.
medoid

Finds medoid of data
pathInterpolate

Interpolation
similarityweight

Calculate the similarity weight for a set of observations
CVpredict

A predict generic function for condvis
clusPath

Constructs tours of data space based on centers of clusters
sectionPlot

Plots the main condvis display
plotTourDiagnostics

Plots diagnostics for the tour supplied
condvis

Creates Condvis Shiny app
conditionPlot

Plots a conditionPlot.
tours

Constructs a various tours of data space
weightcolor

Fade colours according to a weight vector