Releases: tidymodels/tidypredict
tidypredict 0.5
- Changes maintainer to Edgar Ruiz
- Updates author's email addresses
- Removes dependency with
stringr
- Fixes issue with earth parsed_models (#108)
- Addresses issues with XGBoost models
- Improvements to XGBoosts tests
tidypredict 0.4.9
-
Fixes issue handling GLM Binomial earth models (#97)
-
Adds capability to handle single simple Cubist models (#57)
-
Fixed parenthesis issue in the creation of the interval formula (#76)
-
Fixed bug in SQL query generation for XGBoost models with objective
binary:logistic
. -
Re-licensed package from GPL-3 to MIT. See consent from copyright holders here.
tidypredict 0.4.8
- CRAN submission for a broken test case.
tidypredict 0.4.7
- Change to with with version 5.1.2 and above of the
earth
package. As a result,tidypredict
will only parse objects created by this and later versions ofearth
.
tidypredict 0.4.6
- Small release for
xgboost
changes.
tidypredict 0.4.2
- Parses ranger classification models
- Adds method support for broom’s
tidy()
function. Regression models only - Adds
as_parsed_model()
function. It adds the proper class components to the list. - Adds initial support for
partykit’s ctree()
model - Adds support for parsnip fitted models:
lm
,randomForest
,ranger
, andearth
- Adds support for
xgb.Booster
models provided by the xgboost package (@Athospd, #43) - Adds support for
Cubist::cubist()
models (# 36)
tidypredict 0.3
New features
- Adds support for MARS models provided by the
earth
package
Improvements
-
New parsed models are now list objects as opposed to data frames.
-
tidypredict_to_column() no longer supports
ranger
andrandomForest
because of the multiple queries generated by multiple trees. -
All functions that read the parsed models and create the tidy eval formula now use the list object.
-
Most of the code that depends on dplyr programming has been removed.
-
Removes dependencies on: tidyr, tibble
Bug Fixes
- It now returns all of the trees instead of just one for tree based models (
randomForest
&ranger
) (#29)
tidypredict 0.2.1
- Adds compatibility with the latest version of
tibble
tidypredict 0.2.0
New features
- Add support for
ranger()
models.
Bug fixes
- Using
x ~.
in a randomForest() formula fails (#18 @washcycle).
tidypredict 0.1.0
It parses a fitted 'R' model object, and returns a formula in 'Tidy Eval' code that calculates the predictions.
It works with several databases back-ends because it leverages 'dplyr' and 'dbplyr' for the final 'SQL' translation of the algorithm. It currently supports lm(), glm() and randomForest() models.