Ninth International Conference on Document Analysis and Recognition (ICDAR 2007) Vol 1
Multi-Objective Optimization for SVM Model Selection
Curitiba, Parana, Brazil
September 23-September 26
ISBN: 0-7695-2822-8
C. Chatelain, Laboratoire LITIS, Universite de Rouen, Avenue de l?universite
S. Adam, Laboratoire LITIS, Universite de Rouen, Avenue de l?universite
Y. Lecourtier, Laboratoire LITIS, Universite de Rouen, Avenue de l?universite
L. Heutte, Laboratoire LITIS, Universite de Rouen, Avenue de l?universite
T. Paquet, Laboratoire LITIS, Universite de Rouen, Avenue de l?universite
In this paper, we propose a multi-objective optimiza- tion method for SVM model selection using the well known NSGA-II algorithm. FA and FR rates are the two crite- ria used to find the optimal hyperparameters of a set of SVM classifiers. The proposed strategy is applied to a digit/outlier discrimination task embedded in a more global information extraction system that aims at locating and recognizing numerical fields in handwritten incoming mail documents. Experiments conducted on a large database of digits and outliers show clearly that our method com- pares favorably with the results obtained by a state-of-the- art mono-objective optimization technique using the classi- cal Area Under ROC Curve criterion (AUC).
Citation:
C. Chatelain, S. Adam, Y. Lecourtier, L. Heutte, T. Paquet, "Multi-Objective Optimization for SVM Model Selection," icdar, vol. 1, pp.427-431, Ninth International Conference on Document Analysis and Recognition (ICDAR 2007) Vol 1, 2007