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Local Individual Conditional Expectation (localICE) is a
local explanation approach from the field of eXplainable Artificial
Intelligence (XAI). This is the repository of the
R
-package localICE
.
localICE is a model-agnostic XAI approach which provides
three-dimensional local explanations for particular data instances. The
approach is proposed in the master thesis of Martin Walter as an
extension to ICE (see Reference). The three dimensions are the two
features at the horizontal and vertical axes as well as the target
represented by different colors. The approach is applicable for
classification and regression problems to explain interactions of two
features towards the target. For classification models, the number of
classes can be more than two and each class is added as a different
color to the plot. The given instance is added to the plot as two dotted
lines according to the feature values. The localICE
-package
can explain features of type factor
and
numeric
of any machine learning model. Automatically
supported machine learning libraries are MLR
,
randomForest
, caret
or all other with an
S3
predict function. For further model types from other
libraries, a predict function has to be provided as an argument in order
to get access to the model, as described below by means of an example
with the h2o
library. ### Reference Alex Goldstein et
al. “Peeking Inside the Black Box: Visualizing Statistical Learning
With Plots of Individual Conditional Expectation”. In: Journal
of Computational and Graphical Statistics 24.1 (2013), pp. 44–65.
URL: http://arxiv.org/abs/1309.6392
localICE
with any machine learning library, in this case
with h2o
:if(require("h2o") && require("mlbench")){
h2o.init()
# Wrapping the h2o predict function and data type:
predict.fun = function(model,newdata){
prediction = h2o.predict(model, as.h2o(newdata))
prediction = as.data.frame(prediction)
return(prediction$predict)
}
# Get data and train a random forest
data("PimaIndiansDiabetes")
rf = h2o.randomForest(y = "glucose", training_frame = as.h2o(PimaIndiansDiabetes))
# Get explanation
explanation = localICE(
instance = PimaIndiansDiabetes[1, ],
data = PimaIndiansDiabetes,
feature_1 = "age",
feature_2 = "diabetes",
target = "glucose",
model = rf,
regression = TRUE,
predict.fun = predict.fun,
step_1 = 5
)
plot(explanation)
h2o.shutdown(prompt = FALSE)
}
For official version, install via CRAN:
install.packages("localICE")
require("localICE")
help("localICE")
For developmental version, install via GitHub:
if(require("devtools")){
install_github("viadee/localICE")
}
BSD 3-Clause License
Martin Walter - Initial work
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.