@inproceedings{02067e883f844fd1b9dcc4892c4c12f3,
title = "Handling uncertainties in SVM classification",
abstract = "This paper addresses the pattern classification problem arising when available target data include some uncertainty information. Target data considered here is either qualitative (a class label) or quantitative (an estimation of the posterior probability). Our main contribution is a SVM inspired formulation of this problem allowing to take into account class label through a hinge loss as well as probability estimates using -insensitive cost function together with a minimum norm (maximum margin) objective. This formulation shows a dual form leading to a quadratic problem and allows the use of a representer theorem and associated kernel. The solution provided can be used for both decision and posterior probability estimation. Based on empirical evidence our method outperforms regular SVM in terms of probability predictions and classification performances.",
keywords = "maximal margin algorithm, support vector machines, uncertain labels",
author = "Emilie Niaf and Remi Flamary and Carole Lartizien and Stephane Canu",
year = "2011",
month = sep,
day = "5",
doi = "10.1109/SSP.2011.5967814",
language = "English",
isbn = "9781457705700",
series = "IEEE Workshop on Statistical Signal Processing Proceedings",
pages = "757--760",
booktitle = "2011 IEEE Statistical Signal Processing Workshop, SSP 2011",
note = "2011 IEEE Statistical Signal Processing Workshop, SSP 2011 ; Conference date: 28-06-2011 Through 30-06-2011",
}