hal-00695631, version 1
A Generalized Kernel Approach to Structured Output Learning
Hachem Kadri
1Mohammad Ghavamzadeh
1Philippe Preux
a, 1
International Conference on Machine Learning (ICML) (2013)
Résumé : We study the problem of structured output learning from a regression perspective. We first provide a general formulation of the kernel dependency estimation (KDE) problem using operator-valued kernels. We show that some of the existing formulations of this problem are special cases of our framework. We then propose a covariance-based operator-valued kernel that allows us to take into account the structure of the kernel feature space. This kernel operates on the output space and encodes the interactions between the outputs without any reference to the input space. To address this issue, we introduce a variant of our KDE method based on the conditional covariance operator that in addition to the correlation between the outputs takes into account the effects of the input variables. Finally, we evaluate the performance of our KDE approach using both covariance and conditional covariance kernels on two structured output problems, and compare it to the state-of-the-art kernel-based structured output regression methods.
- a – Université Charles de Gaulle - Lille III
- 1 : SEQUEL (INRIA Lille - Nord Europe)
- INRIA – CNRS : UMR8146 – Université Lille I - Sciences et technologies – Université Lille III - Sciences humaines et sociales – Ecole Centrale de Lille
- Domaine : Statistiques/Machine Learning
Informatique/Apprentissage - Mots-clés : structured outputs – operator-valued kernel – function-valued RKHS – kernel dependency estimation
- Référence interne : RR-7956
- hal-00695631, version 1
- http://hal.inria.fr/hal-00695631
- oai:hal.inria.fr:hal-00695631
- Contributeur : Hachem Kadri
- Soumis le : Mercredi 9 Mai 2012, 14:27:52
- Dernière modification le : Mardi 8 Janvier 2013, 11:21:23






Documents associés

Exporter