The iml
package can
now handle bigger datasets. Earlier problems with exploding memory have
been fixed for FeatureEffect
, FeatureImp
and
Interaction
. It’s also possible now to compute
FeatureImp
and Interaction
in parallel. This
document describes how.
First we load some data, fit a random forest and create a Predictor object.
set.seed(42)
library("iml")
library("randomForest")
data("Boston", package = "MASS")
rf <- randomForest(medv ~ ., data = Boston, n.trees = 10)
X <- Boston[which(names(Boston) != "medv")]
predictor <- Predictor$new(rf, data = X, y = Boston$medv)
Parallelization is supported via the {future} package. All you need
to do is to choose a parallel backend via
future::plan()
.
library("future")
library("future.callr")
# Creates a PSOCK cluster with 2 cores
plan("callr", workers = 2)
Now we can easily compute feature importance in parallel. This means that the computation per feature is distributed among the 2 cores I specified earlier.
That wasn’t very impressive, let’s actually see how much speed up we get by parallelization.
bench::system_time({
plan(sequential)
FeatureImp$new(predictor, loss = "mae")
})
#> process real
#> 2.01s 1.91s
bench::system_time({
plan("callr", workers = 2)
FeatureImp$new(predictor, loss = "mae")
})
#> process real
#> 370.1ms 3.62s
A little bit of improvement, but not too impressive. Parallelization is more useful in the case where the model uses a lot of features or where the feature importance computation is repeated more often to get more stable results.
bench::system_time({
plan(sequential)
FeatureImp$new(predictor, loss = "mae", n.repetitions = 10)
})
#> process real
#> 3.44s 3.35s
bench::system_time({
plan("callr", workers = 2)
FeatureImp$new(predictor, loss = "mae", n.repetitions = 10)
})
#> process real
#> 397.6ms 4.7s
Here the parallel computation is twice as fast as the sequential computation of the feature importance.
The parallelization also speeds up the computation of the interaction statistics: