DocumentCode :
2102025
Title :
An empirical comparison of in-learning and post-learning optimization schemes for tuning the support vector machines in cost-sensitive applications
Author :
Tortorella, Francesco
fYear :
2003
fDate :
17-19 Sept. 2003
Firstpage :
560
Lastpage :
565
Abstract :
Support vector machines (SVM) are currently one of the classification systems most used in pattern recognition and data mining because of their accuracy and generalization capability. However, when dealing with very complex classification tasks where different errors bring different penalties, one should take into account the overall classification cost produced by the classifier more than its accuracy. It is thus necessary to provide some methods for tuning the SVM on the costs of the particular application. Depending on the characteristics of the cost matrix, this can be done during or after the learning phase of the classifier. In this paper we introduce two optimization schemes based on the two possible approaches and compare their performance on various data sets and kernels. The first experimental results show that both the proposed schemes are suitable for tuning SVM in cost-sensitive applications.
Keywords :
data mining; generalisation (artificial intelligence); learning (artificial intelligence); optimisation; pattern recognition; support vector machines; SVM; classification cost; cost matrix; cost-sensitive applications; data mining; generalization; in-learning optimization; pattern recognition; performance; post-learning optimization; support vector machines; tuning; Cancer; Classification algorithms; Costs; Data mining; Error correction; Kernel; Pattern recognition; Risk management; Support vector machine classification; Support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Image Analysis and Processing, 2003.Proceedings. 12th International Conference on
Print_ISBN :
0-7695-1948-2
Type :
conf
DOI :
10.1109/ICIAP.2003.1234109
Filename :
1234109
Link To Document :
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