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reticulate
from imports.create_env
.explain_tidymodels
to ignore
residual_function
for classification models.explain_h2o
examples that might occasionally
crash.DALEX
to 2.4.0.randomForest
from suggest due to it enforcing R
v4.1 (changed to ranger
).predict_surrogate()
when
new_observation
has too many variables (e.g. target
outcome).mlr3
learner-like objects with
mlr3::as_learner()
in explain_mlr3()
.explain_keras
and explain_scikitlearn
examples while running on macOS as they can rise false-positive errors
during R CMD check for some versions of macOS. The very same code still
executes properly in tests.explain_tidymodels
if the model inherits from
model_fit
class.stacks
package).dalex_load_explainer
function.explain_tidymodels()
added as a support for tidymodels
workflows.predict_surrogate()
function is added to provide easier
interface of accessing lime/iml/localModel implementations of the LIME
method.yhat.GraphLearner()
and
model_info.GraphLearner()
to handle GraphLearners
mlr3
objects.explain_h2o()
data parameter will bo converted to
data.frame if H2OFrame object was passed.explain_xgboost()
function addedfunnel_mesure()
and
training_test_comparison()
recognizes type of the task and
applies proper loss_functionyhat.WrappedModel()
returns factor response if
predict.type
is not prob
.explain_h2o()
now supports model
as
H2OAutoML
yhat.LearnerClassif()
returning wrong column of
probabilities (PR #34, thanks Hubert!)plot.overall_comparison()
(I lack words that
could describe Your greatness, Ania!).funnel_measure()
that imporves it’s
stability.funnel_measure()
objects. (Thanks
Anna Kozak, You are awesome!).funnel_measure()
and
plot.funnel_measure()
(Once again You are awesome,
Ania!).aspect_importnace
from ingredients
(#19)mlr3
addedfunnel_measure()
champion_challenger()
.overall_comparison()
added with generic plot and print
functions.training_test_comparison()
added with generic plot and
print functions.funnel_measure()
added with generic plot and print
functions.explain_keras()
added.explain_mljar()
added.explain_scikitlearn()
rebuilded. Some of the code was
exported to inner functions (helper_functions.R).README.md
.scikitlearn_unix.yml
file renamed to
testing_environment.yml
.explain_scikitlearn()
rebuilded. Now class
scikitlearn_model is a additional class for original Python object
instead of another object.explain_scikitlearn()
have
addidtional field param_set
.yhat()
is now generic.README.md
.on_attach()
function now checks if conda is installed.
Alert is rised if not.explain_h2o()
and explain_mlr()
rebuilded.scikitlearn_unix.yml
file added to external data. This
helps testing using linuxlike OS.create_env()
changed.explain_mlr()
function implemented.explain_h2o()
function implemented.explain_scikitlearn()
function implemented.create_env()
function implemented.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.
Health stats visible at Monitor.