ingredients 2.3.0
- breaking change: 
calculate_variable_splits() now treats
integer variables as categorical. This change
is propagated to ceteris_paribus(),
partial_dependence(),
accumulated_dependence(),
conditional_dependence(),
aggregate_profiles(),
DALEX::predict_profile(),
DALEX::model_profile() 
- fix an error in 
ceteris_paribus /
calculate_variable_splits when tidymodels uses
integer variables #145 
- fix an error in 
show_observations #148.
This change is propagated to DALEX::plot.predict_profile()
#540. 
- fix #149
by replacing all 
class(x) = "y" with
is(x, "y") 
ingredients 2.2.1
- added 
facet_scales parameter to
plot.aggregated_profiles_explainer ('free_x'
by default) #138
and plot.ceteris_paribus_explainer ('free_x'
or 'free_y' by default, depending on plot type) #136 
ingredients 2.2.0
- fixes explanations when data has one column #137
 
ingredients 2.0.1
- code and documentation maintenance #130
 
- fixed an error when 
N = NULL in
partial_dependence() etc. #134 
ingredients 2.0
plot.ceteris_paribus_explainer now by default for
categorical variables plots profiles (not lines -prev default- nor
bars) 
- ALE plots are now centered around average y_hat #126
 
- colors from DrWhy color palette is used for CP #125
 
ingredients 1.3.1
- default 
subtitle value in plot.fi changed
to NULL from NA (unification) 
- now in the 
ceteris_paribus function one can specify how
grid points shall be calculated, see
variable_splits_type 
ceteris_paribus and aggregates are now working with
missing data, this solves #120 
plot(ceteris_paribus) change default color
to label or ids if more than one profile is detected,
this solves #123 
ceteris_paribus has now argument
variable_splits_with_obs which included values from
new_observations in the variable_splits, this
solves #124 
ingredients 1.3.0
- deprecate 
n_sample argument in
feature_importance (now it’s N) #113 
plot_profile now handles multilabel models 
ingredients 1.2.0
DALEX is moved to Suggests as in #112 
plot_categorical_ceteris_paribus can plot bars
(again) 
- add 
bind_plots function 
ingredients 1.1.0
- support 
R v4.0 and depend on R v3.5 to
comply with DALEX 
- new arguments 
title and subtitle in
several plots 
ingredients 1.0.0
- change 
dependency to dependence #103 
ingredients 0.5.2
ceteris_paribus profiles are now working for
categorical variables 
show_profiles, show_observations,
show_residuals are now working for categorical
variables 
ingredients 0.5.1
- synchronisation with changes in DALEX 0.5
 
- new argument 
desc_sorting in
plot.variable_importance_explainer #94 
ingredients 0.5.0
feature_importance now does 15
permutations on each variable by default. Use the B
argument to change this number 
- added boxplots to 
plot.feature_importance and
plotD3.feature_importance that showcase the permutation
data 
- in 
aggregate_profiles: preserve _x_ column
factor order and sort its values #82 
ingredients 0.4.2
aggregate_profiles use now gaussian kernel smoothing.
Use the span argument for fine control over this parameter
(#79) 
- change 
variable_type and variables
arguments usage in the aggregate_profiles,
plot.ceteris_paribus and
plotD3.ceteris_paribus 
- remove 
variable_type argument from
plotD3.aggregated_profiles (now the same as in
plot.aggregated_profiles) 
- Kasia Pekala is moved as contributor to the 
DALEXtra as
aspect_importance is moved to DALEXtra as well
(See
v0.3.12 changelog) 
- added Travis-CI for OSX
 
ingredients 0.4.1
- fixed rounding problem in the describe function (#76)
 
ingredients 0.4
ingredients 0.3.12
aspect_importance is moved to DALEXtra (#66) 
- examples are updated in order to reflect changes in
titanic_imputed from DALEX (#65) 
ingredients 0.3.11
- modified 
plot.aspect_importance - it can plot more than
single figure
 
- modified 
triplot, plot.aspect_importance
and plot_group_variables to add more clarity in plots and
allow some parameterization 
ingredients 0.3.10
- added 
triplot function that illustrates hierarchical
aspect_importance() groupings 
- changes in 
aspect_importance() functions 
- added back the vigniette for 
aspect_importance() 
ingredients 0.3.9
- change 
only_numerical parameter to
variable_type in functions aggregated_profiles(),
cluster_profiles(), plot() and others, as requested in #15 
ingredients 0.3.8
- Natural language description generated with 
describe()
function for ceteris_paribus(),
feature_importance() and aggregate_profiles()
explanations. 
ingredients 0.3.7
aggregated_profiles_conditional and
aggregated_profiles_accumulated are rewritten with some
code fixes 
ingredients 0.3.6
- a new version of 
lime is implemented in the
lime()/aspect_importance() function. 
- Kasia Pekala and Huber Baniecki are added as contributors.
 
ingredients 0.3.5
- new feature #29.
Feature importance now takes an argument 
B that replicates
permutations B times and calculates average from drop
loss. 
ingredients 0.3.4
plotD3 now supports Ceteris Paribus Profiles. 
feature_importance now can take
variable_grouping argument that assess importance of group
of features 
- fix in ceteris_paribus, now it handles models with just one
variable
 
- fix #27
for multiple rows
 
ingredients 0.3.3
show_profiles and show_residuals functions
extend Ceteris Paribus Plots. 
show_aggreagated_profiles is renamed to
show_aggregated_profiles 
- centering of ggplot2 title
 
ingredients 0.3.2
- added new functions 
describe() and
print.ceteris_paribus_descriptions() for text based
descriptions of Ceteris Paribus explainers 
plot.ceteris_paribus_explainer works now also for
categorical variables. Use the only_numerical = FALSE to
force bars 
ingredients 0.3.1
- added references to PM VEE
 
partial_profiles(), accumulated_profiles()
and conditional_profiles for variable effects 
- major changes in function names and file names
 
ingredients 0.3
ceteris_paribus_2d extends classical ceteris paribus
profiles 
ceteris_paribus_oscillations calculates oscilations for
ceteris paribus profiles 
- fixed examples and file names
 
ingredients 0.2
cluster_profiles helps to identify interactions 
partial_dependency calculates partial dependency
plots 
aggregate_profiles calculates partial dependency plots
and much more 
ingredients 0.1
- port of 
model_feature_importance and
model_feature_response from DALEX to
ingredients 
- added tests