Authors
Simon Bernard, Laurent Heutte, Sebastien Adam
Publication date
2009/6/14
Conference
2009 International joint conference on neural networks
Pages
302-307
Publisher
IEEE
Description
In this paper we present a study on the random forest (RF) family of ensemble methods. In a ldquoclassicalrdquo RF induction process a fixed number of randomized decision trees are inducted to form an ensemble. This kind of algorithm presents two main drawbacks : (i) the number of trees has to be fixed a priori (ii) the interpretability and analysis capacities offered by decision tree classifiers are lost due to the randomization principle. This kind of process in which trees are independently added to the ensemble, offers no guarantee that all those trees will cooperate effectively in the same committee. This statement rises two questions: are there any decision trees in a RF that provide the deterioration of ensemble performance? If so, is it possible to form a more accurate committee via removal of decision trees with poor performance? The answer to these questions is tackled as a classifier selection problem. We thus …
Total citations
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Scholar articles
S Bernard, L Heutte, S Adam - 2009 International joint conference on neural networks, 2009