The random subspace method for constructing decision forests

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Tin Kam Ho;  
Lucent Technol., AT&T Bell Labs., Murray Hill, NJ 

This paper appears in: Pattern Analysis and Machine Intelligence, IEEE Transactions on
Issue Date: Aug 1998
Volume: 20 Issue:8
On page(s): 832 - 844
ISSN: 0162-8828
References Cited: 33
Cited by : 135
INSPEC Accession Number: 6013886
Digital Object Identifier: 10.1109/34.709601 
Date of Current Version: 06 August 2002
Sponsored by: IEEE Computer Society 

Abstract

Much of previous attention on decision trees focuses on the splitting criteria and optimization of tree sizes. The dilemma between overfitting and achieving maximum accuracy is seldom resolved. A method to construct a decision tree based classifier is proposed that maintains highest accuracy on training data and improves on generalization accuracy as it grows in complexity. The classifier consists of multiple trees constructed systematically by pseudorandomly selecting subsets of components of the feature vector, that is, trees constructed in randomly chosen subspaces. The subspace method is compared to single-tree classifiers and other forest construction methods by experiments on publicly available datasets, where the method's superiority is demonstrated. We also discuss independence between trees in a forest and relate that to the combined classification accuracy

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