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?
machine-learning
tag info (actually applicable here, too, despite that you have not tagged your question as such).