DALEX2 0.9
- DALEX2 forked from DALEX package. The primary goal was to reduce number of dependencies and make the architecture of the whole solution more elastic. Individual explainers are moved to separate packages while DALEX2 serves only as a factory for explainers.
- changed names of datasets, e.g. HRTest -> HR_test (#1)
DALEX 0.2.5
- The defaults of
single_prediction()
are now consistent with breakDown::broken()
. Specifically, baseline
is now 0
by default instead of "Intercept"
. The user can also specify the baseline
and other arguments by passing them to single_prediction
. (#39) WARNING: Change in the default value of baseline
.
- New
yhat.*
functions help to handle additional parameters to different predict()
functions.
DALEX 0.2.4
- New dataset
HR
and HRTest
. Target variable is a factor with three levels. Is used in examples for classification.
- The
plot.model_performance()
has now show_outliers
parameter. Set it to anything >0 and observations with largest residuals will be presented in the plot. (#34)
DALEX 0.2.3
- Small fixes in
variable_response()
to better support of gbm
models (c8393120ffb05e2f3c70b0143c4e92dc91f6c823).
- Better title for
plot_model_performance()
(e5e61d0398459b78ea38ccc980c4040fd853f449).
- Tested with
breakDown
v 0.1.6.
DALEX 0.2.2
- The
single_variable() / variable_response()
function uses predict_function
from explainer
(#17)
DALEX 0.2.1
- The
explain()
function converts tibbles
to data.frame
when specified as data
argument (#15)
- The default generic
explain.default()
should help when explain()
from dplyr
is loaded after DALEX
(#16)
DALEX 0.2.0
- New names for some functions:
model_performance()
, variable_importance()
, variable_response()
, outlier_detection()
, prediction_breakdown()
. Old names are now deprecated but still working. (#12)
- A new dataset
apartments
- will be used in examples
variable_importance()
allows work on full dataset if n_sample
is negative
plot_model_performance()
uses ecdf or boxplots (depending on geom
parameter).
DALEX 0.1.8
- Function
single_variable()
supports factor variables as well (with the use of factorMerger
package). Remember to use type='factor'
when playing with factors. (#10)
- Change in the function
explain()
. Old version has an argument predict.function
, now it’s predict_function
. New name is more consistent with other arguments. (#7)
- New vigniette for
xgboost
model (#11)
DALEX 0.1.1
- Support for global model structure explainers with
variable_dropout()
function
DALEX 0.1
- DALEX package is now public
explain()
function implemented
single_prediction()
function implemented
single_variable()
function implemented