DocumentCode
2451073
Title
Ambiguity-guided dynamic selection of ensemble of classifiers
Author
dos Santos, Eulanda M. ; Sabourin, Robert ; Maupin, Patrick
Author_Institution
Ecole de Technol. Super., Montreal
fYear
2007
fDate
9-12 July 2007
Firstpage
1
Lastpage
8
Abstract
Dynamic classifier selection has traditionally focused on selecting the most accurate classifier to predict the class of a particular test pattern. In this paper we propose a new dynamic selection method to select, from a population of ensembles, the most confident ensemble of classifiers to label the test sample. Such a level of confidence is measured by calculating the ambiguity of the ensemble on each test sample. We show theoretically and experimentally that choosing the ensemble of classifiers, from a population of high accurate ensembles, with lowest ambiguity among its members leads to increase the level of confidence of classification, consequently, increasing the generalization performance. Experimental results conducted to compare the proposed method to static selection and DCS-LA, demonstrate that our method outperforms both DCS-LA and static selection strategies when a population of high accurate ensembles is available.
Keywords
genetic algorithms; ambiguity-guided dynamic selection; classifier; diversity measures; ensemble; genetic algorithms; Automatic testing; Bagging; Boosting; Diversity reception; Genetic algorithms; Pareto optimization; Production engineering; Research and development; Sorting; System testing; diversity measures; dynamic selection; ensemble of classifiers; genetic algorithms;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Fusion, 2007 10th International Conference on
Conference_Location
Quebec, Que.
Print_ISBN
978-0-662-45804-3
Electronic_ISBN
978-0-662-45804-3
Type
conf
DOI
10.1109/ICIF.2007.4408123
Filename
4408123
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