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I've tried fitting a random forest like so:

from xgboost import XGBRFRegressor
from sklearn.datasets import make_regression
from sklearn.model_selection import train_test_split

X, y = make_regression(random_state=7)

X_train, X_test, y_train, y_test = train_test_split(X, y, random_state=7)

forest = XGBRFRegressor(num_parallel_tree = 10, num_boost_round = 1000, verbose=3)

forest.fit(
    X_train, 
    y_train,
    eval_set = [(X_test, y_test)],
    early_stopping_rounds = 10,
    verbose = True
)

However, early stopping never seems to kick in and as far as I can tell, the model fits the full 10,000 trees requested. The evaluation metric is only printed once, rather than after every boosting round as I would have expected.

What's the right way to set up this type of model (working within the scikit-learn API) so that early stopping takes effect as I would expect?

I have requested clarification from the developers here:

https://discuss.xgboost.ai/t/how-is-xgbrfregressor-intended-to-work-with-early-stopping/2391

2

The docs say:

[XGBRFRegressor has] default values and meaning of some of the parameters adjusted accordingly. In particular:

  • n_estimators specifies the size of the forest to be trained; it is converted to num_parallel_tree, instead of the number of boosting rounds
  • learning_rate is set to 1 by default
  • colsample_bynode and subsample are set to 0.8 by default
  • booster is always gbtree

And you can see that in action in the code: num_parallel_trees gets overridden as the input n_estimators, and the num_boosting_rounds gets overridden as 1.

It's probably worth reading the paragraphs preceding the documentation link in order to understand how xgboost treats random forests.

2
  • 1
    I see now - the docs are accurate, but they do not directly mention num_boosting_rounds being overridden. All they say is In particular, it is impossible to combine random forests with gradient boosting using this API. which you have to read in conjunction with the corresponding docs for the XGBoost API, which allows higher values of num_boosting_rounds for RF + gradient boosting. So in short: no, early stopping cannot be used with XGBRFRegressor.
    – user667489
    Jul 29 at 8:11
  • The other point of confusion is that XGBRFRegressor.fit() accepts all the early stopping parameters, even though they don't really do anything useful.
    – user667489
    Jul 29 at 8:15

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