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Class Noise Mitigation Through Instance Weighting.

Authors :
Carbonell, Jaime G.
Siekmann, Jörg
Kok, Joost N.
Koronacki, Jacek
de Mantaras, Raomon Lopez
Matwin, Stan
Mladenič, Dunja
Skowron, Andrzej
Rebbapragada, Umaa
Brodley, Carla E.
Source :
Machine Learning: ECML 2007; 2007, p708-715, 8p
Publication Year :
2007

Abstract

We describe a novel framework for class noise mitigation that assigns a vector of class membership probabilities to each training instance, and uses the confidence on the current label as a weight during training. The probability vector should be calculated such that clean instances have a high confidence on its current label, while mislabeled instances have a low confidence on its current label and a high confidence on its correct label. Past research focuses on techniques that either discard or correct instances. This paper proposes that discarding and correcting are special cases of instance weighting, and thus, part of this framework. We propose a method that uses clustering to calculate a probability distribution over the class labels for each instance. We demonstrate that our method improves classifier accuracy over the original training set. We also demonstrate that instance weighting can outperform discarding. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISBNs :
9783540749578
Database :
Complementary Index
Journal :
Machine Learning: ECML 2007
Publication Type :
Book
Accession number :
33170082
Full Text :
https://doi.org/10.1007/978-3-540-74958-5_71