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ICANN
2009
Springer

Learning SVMs from Sloppily Labeled Data

13 years 9 months ago
Learning SVMs from Sloppily Labeled Data
This paper proposes a modelling of Support Vector Machine (SVM) learning to address the problem of learning with sloppy labels. In binary classification, learning with sloppy labels is the situation where a learner is provided with labelled data, where the observed labels of each class are possibly noisy (flipped) version of their true class and where the probability of flipping a label y to −y only depends on y. The noise probability is therefore constant and uniform within each class: learning with positive and unlabeled data is for instance a motivating example for this model. In order to learn with sloppy labels, we propose SloppySvm, an SVM algorithm that minimizes a tailored nonconvex functional that is shown to be a uniform estimate of the noise-free SVM functional. Several experiments validate the soundness of our approach.
Guillaume Stempfel, Liva Ralaivola
Added 25 Jul 2010
Updated 25 Jul 2010
Type Conference
Year 2009
Where ICANN
Authors Guillaume Stempfel, Liva Ralaivola
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