This package provides the following bindings for parsnip package:
- the
treeengine fordecision_tree; - the
catboostengine forboost_tree- only available incatboostbranch. See catboost; - the
lightGBMengine forboost_tree.
Note that the development of this package has shifted to the bonsai package. We suggest filing issues and/or pull requests there.
Not on CRAN yet.
remotes::install_github("curso-r/treesnip")See catboost to use with catboost.
# decision_tree
model <- parsnip::decision_tree()
parsnip::set_engine(model, "tree")
# boost_tree
model <- parsnip::boost_tree(mtry = 1, trees = 50)
parsnip::set_engine(model, "catboost")
parsnip::set_engine(model, "lightgbm")decision_tree()
| parsnip | tree |
|---|---|
| min_n | minsize |
| cost_complexity | mindev |
boost_tree()
| parsnip | catboost | lightGBM |
|---|---|---|
| mtry | rsm | feature_fraction |
| trees | iterations | num_iterations |
| min_n | min_data_in_leaf | min_data_in_leaf |
| tree_depth | depth | max_depth |
| learn_rate | learning_rate | learning_rate |
| loss_reduction | Not found | min_gain_to_split |
| sample_size | subsample | bagging_fraction |
Originally treesnip had support for both lightgbm and catboost.
Since catboost has no intent to make it to CRAN we removed the parsnip
implementation from the main package. You can still use it from the
catboost branch that we will keep up to date with the main branch.
The catboost branch can be installed with:
remotes::install_github("curso-r/treesnip@catboost")
