Switching class labels to generate classification ensembles

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摘要

Ensembles that combine the decisions of classifiers generated by using perturbed versions of the training set where the classes of the training examples are randomly switched can produce a significant error reduction, provided that large numbers of units and high class switching rates are used. The classifiers generated by this procedure have statistically uncorrelated errors in the training set. Hence, the ensembles they form exhibit a similar dependence of the training error on ensemble size, independently of the classification problem. In particular, for binary classification problems, the classification performance of the ensemble on the training data can be analysed in terms of a Bernoulli process. Experiments on several UCI datasets demonstrate the improvements in classification accuracy that can be obtained using these class-switching ensembles.

论文关键词:Classification,Ensemble methods,Bagging,Boosting,Decision tree

论文评审过程:Received 4 August 2004, Accepted 27 February 2005, Available online 13 June 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2005.02.020