Authors
Shi-jin Wang, Avin Mathew, Yan Chen, Li-feng Xi, Lin Ma, Jay Lee
Publication date
2009/4/1
Journal
Expert Systems with applications
Volume
36
Issue
3
Pages
6466-6476
Publisher
Pergamon
Description
Ensemble classification – combining the results of a set of base learners – has received much attention in the machine learning community and has demonstrated promising capabilities in improving classification accuracy. Compared with neural network or decision tree ensembles, there is no comprehensive empirical research in support vector machine (SVM) ensembles. To fill this void, this paper analyses and compares SVM ensembles with four different ensemble constructing techniques, namely bagging, AdaBoost, Arc-X4 and a modified AdaBoost. Twenty real-world data sets from the UCI repository are used as benchmarks to evaluate and compare the performance of these SVM ensemble classifiers in terms of the classification accuracy. Different kernel functions and different numbers of base SVM learners are tested in the ensembles. The experimental results show that although SVM ensembles are not …
Total citations
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Scholar articles
S Wang, A Mathew, Y Chen, L Xi, L Ma, J Lee - Expert Systems with applications, 2009