pROC 1.14.0
pROC 1.14.0 was released with many bug fixes and some new features.
Multiclass ROC
The multiclass.roc
function can now take a multivariate input with columns corresponding to scores of the different classes. The columns must be named with the corresponding class labels. Thanks Matthias Döring for the contribution.
Let's see how to use it in practice with the iris dataset. Let's first split the dataset into a training and test sets:
data(iris) iris.sample <- sample(1:150) iris.train <- iris[iris.sample[1:75],] iris.test <- iris[iris.sample[76:150],]
We'll use the nnet
package to generate some predictions. We use the type="prob"
to the predict
function to get class probabilities.
library("nnet") mn.net <- nnet::multinom(Species ~ ., iris.train) iris.predictions <- predict(mn.net, newdata=iris.test, type="prob") head(iris.predictions)
setosa versicolor virginica 63 2.877502e-21 1.000000e+00 6.647660e-19 134 1.726936e-27 9.999346e-01 6.543642e-05 150 1.074627e-28 7.914019e-03 9.920860e-01 120 6.687744e-34 9.986586e-01 1.341419e-03 6 1.000000e+00 1.845491e-24 6.590050e-72 129 4.094873e-45 1.779882e-15 1.000000e+00
Notice the column names, identical to the class labels. Now we can use the multiclass.roc
function directly:
multiclass.roc(iris.test$Species, iris.predictions)
Many modelling functions have similar interfaces, where the output of predict
can be changed with an extra argument. Check their documentation to find out how to get the required data.
Multiple aesthetics for ggroc
It is now possible to pass several aesthetics to ggroc
. So for instance you can map a curve to both colour
and linetype
:
roc.list <- roc(outcome ~ s100b + ndka + wfns, data = aSAH) ggroc(roc.list, aes=c("linetype", "color"))
Mapping 3 ROC curves to 2 aesthetics with ggroc.
Getting the update
The update his available on CRAN now. You can update your installation by simply typing:
install.packages("pROC")
Here is the full changelog:
- The
multiclass.roc
function now accepts multivariate decision values (code contributed by Matthias Döring). ggroc
supports multiple aesthetics.- Make ggplot2 dependency optional.
- Suggested packages can be installed interactively when required.
- Passing both
cases
andcontrols
orresponse
andpredictor
arguments is now an error. - Many small bug fixes.
Xavier Robin
Publié le mercredi 13 mars 2019 à 10:22 CET
Lien permanent : /blog/2019/03/13/proc-1.14.0
Tags :
pROC
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