arXiv:1309.6818 [cs.LG]AbstractReferencesReviewsResources
Boosting in the presence of label noise
Jakramate Bootkrajang, Ata Kaban
Published 2013-09-26Version 1
Boosting is known to be sensitive to label noise. We studied two approaches to improve AdaBoost's robustness against labelling errors. One is to employ a label-noise robust classifier as a base learner, while the other is to modify the AdaBoost algorithm to be more robust. Empirical evaluation shows that a committee of robust classifiers, although converges faster than non label-noise aware AdaBoost, is still susceptible to label noise. However, pairing it with the new robust Boosting algorithm we propose here results in a more resilient algorithm under mislabelling.
Comments: Appears in Proceedings of the Twenty-Ninth Conference on Uncertainty in Artificial Intelligence (UAI2013)
Keywords: label noise, non label-noise aware adaboost, label-noise robust classifier, adaboosts robustness, resilient algorithm
Tags: conference paper
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