Model and Feature Selection in Hidden Conditional Random Fields with Group Regularization

Cilla, Rodrigo; Patricio, Miguel A.; Berlanga, Antonio; Molina, Jose M.; Pan, JS; Wozniak, M; Quintian, H; Polycarpou, MM; DdeCarvalho, ACPLF; Corchado, E

Abstract

Sequence classification is an important problem in computer vision, speech analysis or computational biology. This paper presents a new training strategy for the Hidden Conditional Random Field sequence classifier incorporating model and feature selection. The standard Lasso regularization employed in the estimation of model parameters is replaced by overlapping group-L1 regularization. Depending on the configuration of the overlapping groups, model selection, feature selection, or both are performed. The sequence classifiers trained in this way have better predictive performance. The application of the proposed method in a human action recognition task confirms that fact.

Más información

Título según WOS: ID WOS:000342910700015 Not found in local WOS DB
Título de la Revista: WALCOM: ALGORITHMS AND COMPUTATION, WALCOM 2024
Volumen: 8073
Editorial: SPRINGER-VERLAG SINGAPORE PTE LTD
Fecha de publicación: 2013
Página de inicio: 140
Página final: 149
Notas: ISI