Fecha de publicación

2010-02-16T11:57:39Z

2010-02-16T11:57:39Z

2007



Resumen

Peer-reviewed


In the statistical pattern recognition eld the number of samples to train a classifer is usually insu cient. Nevertheless, it has been shown that some learning domains can be divided in a set of related tasks, that can be simultaneously trained sharing information among the different tasks. This methodology is known as the multi-task learning paradigm. In this paper we propose a multi-task probabilistic logistic regression model and develop a learning algorithm based in this framework, which can deal with the small sample size problem. Our experiments performed in two independent databases from the UCI and a multi-task face classification experiment show the improved accuracies of the multi-task learning approach with respect to the single task approach when using the same probabilistic model.

Tipo de documento

Capítulo o parte de libro

Lengua

Inglés

Documentos relacionados

Computer Science, Technology and Multimedia

Citación recomendada

LAPEDRIZA, A.; MASIP, D.; VITRIÀ, J. (2007). "A Hierarchical Approach for Multi-task Logistic Regression". In: MARTÍ, J.; BENEDI, J.M.; MENDONÇA, A.M.; SERRAT, J. Lecture Notes in Computer Science. Springer. Núm. 4478. Pág. 258-265

0302-9743

10.1007/978-3-540-72849-8_33

Derechos

https://creativecommons.org/licenses/by-nc-nd/2.5/es/

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