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Pruning in Ordered Regression Bagging Ensembles
The 2006 IEEE International Joint Conference on Neural Network Proceedings
An efficient procedure for pruning regression ensembles is introduced. Starting from a bagging ensemble, pruning proceeds by ordering the regressors in the original ensemble and then selecting a subset for aggregation. Ensembles of increasing size are built by including first the regressors that perform best when aggregated. This strategy gives an approximate solution to the problem of extracting from the original ensemble the minimum error subensemble, which we prove to be NP-hard. Experiments
doi:10.1109/ijcnn.2006.1716248
fatcat:xgksu24merdvjaeta6jkbkw4zy