Computation times¶
18:52.765 total execution time for auto_examples_ensemble files:
Monotonic Constraints ( |
14:42.378 |
0.0 MB |
Early stopping of Gradient Boosting ( |
01:31.377 |
0.0 MB |
Gradient Boosting regularization ( |
00:37.796 |
0.0 MB |
OOB Errors for Random Forests ( |
00:31.951 |
0.0 MB |
Multi-class AdaBoosted Decision Trees ( |
00:21.701 |
0.0 MB |
Plot the decision surfaces of ensembles of trees on the iris dataset ( |
00:18.364 |
0.0 MB |
Discrete versus Real AdaBoost ( |
00:10.224 |
0.0 MB |
Gradient Boosting Out-of-Bag estimates ( |
00:09.344 |
0.0 MB |
Feature transformations with ensembles of trees ( |
00:06.046 |
0.0 MB |
Gradient Boosting regression ( |
00:05.860 |
0.0 MB |
Two-class AdaBoost ( |
00:04.529 |
0.0 MB |
Single estimator versus bagging: bias-variance decomposition ( |
00:03.119 |
0.0 MB |
Prediction Intervals for Gradient Boosting Regression ( |
00:01.587 |
0.0 MB |
Plot individual and voting regression predictions ( |
00:01.519 |
0.0 MB |
Plot the decision boundaries of a VotingClassifier ( |
00:01.255 |
0.0 MB |
Comparing random forests and the multi-output meta estimator ( |
00:01.213 |
0.0 MB |
IsolationForest example ( |
00:01.204 |
0.0 MB |
Plot class probabilities calculated by the VotingClassifier ( |
00:00.974 |
0.0 MB |
Feature importances with forests of trees ( |
00:00.835 |
0.0 MB |
Decision Tree Regression with AdaBoost ( |
00:00.799 |
0.0 MB |
Hashing feature transformation using Totally Random Trees ( |
00:00.647 |
0.0 MB |
Combine predictors using stacking ( |
00:00.031 |
0.0 MB |
Pixel importances with a parallel forest of trees ( |
00:00.011 |
0.0 MB |