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A Study on the Noise Label Influence in Boosting Algorithms: AdaBoost, GBM and XGBoost
Conference proceeding   Peer reviewed

A Study on the Noise Label Influence in Boosting Algorithms: AdaBoost, GBM and XGBoost

Anabel Gomez-Rios, Julian Luengo and Francisco Herrera
HYBRID ARTIFICIAL INTELLIGENT SYSTEMS, HAIS 2017, Vol.10334, pp.268-280
Lecture Notes in Artificial Intelligence
01/01/2017

Abstract

Computer Science Computer Science, Artificial Intelligence Computer Science, Theory & Methods Science & Technology Technology
In classification, class noise alludes to incorrect labelling of instances and it causes the classifiers to perform worse. In this contribution, we test the resistance against noise of the most influential boosting algorithms. We explain the fundamentals of these state-of-the-art algorithms, providing an unified notation to facilitate their comparison. We analyse how they carry out the classification, what loss functions use and what techniques employ under the boosting scheme.

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