A Probabilistic Interpretation of SVMs with an Application to Unbalanced Classification
Grandvalet, Yves, Mariethoz, Johnny, Bengio, Samy
–Neural Information Processing Systems
In this paper, we show that the hinge loss can be interpreted as the neg-log-likelihood of a semi-parametric model of posterior probabilities. From this point of view, SVMs represent the parametric component of a semi-parametric model fitted by a maximum a posteriori estimation procedure. Thisconnection enables to derive a mapping from SVM scores to estimated posterior probabilities. Unlike previous proposals, the suggested mappingis interval-valued, providing a set of posterior probabilities compatible with each SVM score. This framework offers a new way to adapt the SVM optimization problem to unbalanced classification, whendecisions result in unequal (asymmetric) losses. Experiments show improvements over state-of-the-art procedures.
Neural Information Processing Systems
Dec-31-2006