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As mentioned in the title, Im using SelectFromModel from sklearn to select features for both my random forest and gradient boosting classification models.

#feature selection performed on training dataset to prevent overfitting
sel = SelectFromModel(GradientBoostingClassifier(n_estimators=10, learning_rate=0.25,max_depth=1, max_features = 15, random_state=0).fit(X_train_bin, y_train))
sel.fit(X_train_bin, y_train)

#returns a boolean array to indicate which features are of importance (above the mean threshold)
sel.get_support()

#shows the names of the selected features
selected_feat= X_train_bin.columns[(sel.get_support())]
selected_feat

The boolean array that is returned for random forest and gradient boosting model are COMPLETELY different. random forest feature selection tells me to drop an additional 4 columns (out of 25 features) and the feature selection on the gradient boosting model is telling me to drop nearly everything. What is happening here?

EDIT: I'm trying to compare the performance of these 2 models on my dataset. Should I move the threshold so I at least have approximately the same amount of features to train on?

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  • There is absolutely no reason that they should be the same, or even similar. Neither there is any theory behind such feature selection approaches, they are just heuristic tricks that sometimes seem to work.
    – desertnaut
    May 10, 2021 at 8:24
  • Could you elaborate on their heuristic nature?
    – nibs
    May 11, 2021 at 7:26
  • I am afraid comments in SO is not the appropriate place to do so. Please notice the intro and NOTE in the machine-learning tag info (actually applicable here, too, despite that you have not tagged your question as such).
    – desertnaut
    May 11, 2021 at 8:33

1 Answer 1

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There's no reason for them to select the same variables. GradientBoostingClassifier builds each tree to improve on the error of the previous step, while RandomForestClassifier trains independent trees that have nothing to do with each others' errors.

Another reason why they may select different features is criterion, which is entropy for Random Forests and Friedman MSE for Gradient Boosting. Finally, it could be because both algorithms select random subsets of features when making each split. Hence, they did not compare the same variables in the same order, which will naturally yield different importances.

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