Hala Helmi
Examining the classification accuracy of TSVMs with feature selection in comparison with the GLAD algorithm
Helmi, Hala; Garibaldi, Jonathan M.; Aickelin, Uwe
Authors
Jonathan M. Garibaldi
Uwe Aickelin
Abstract
Gene expression data sets are used to classify and predict patient diagnostic categories. As we know, it is extremely difficult and expensive to obtain gene expression labelled examples. Moreover, conventional supervised approaches cannot function properly when labelled data (training examples) are insufficient using Support Vector Machines (SVM) algorithms. Therefore, in this paper, we suggest Transductive Support Vector Machines (TSVMs) as semi-supervised learning algorithms, learning with both labelled samples data and unlabelled samples to perform the classification of microarray data. To prune the superfluous genes and samples we used a feature selection method called Recursive Feature Elimination (RFE), which is supposed to enhance the output of classification and avoid the local optimization problem. We examined the classification prediction accuracy of the TSVM-RFE algorithm in comparison with the Genetic Learning Across Datasets (GLAD) algorithm, as both are semi-supervised learning methods. Comparing these two methods, we found that the TSVM-RFE surpassed both a SVM using RFE and GLAD.
Citation
Helmi, H., Garibaldi, J. M., & Aickelin, U. Examining the classification accuracy of TSVMs with feature selection in comparison with the GLAD algorithm. Presented at UKCI 2011, 11th Annual Workshop on Computational Intelligence
Conference Name | UKCI 2011, 11th Annual Workshop on Computational Intelligence |
---|---|
End Date | Sep 9, 2011 |
Deposit Date | Jun 18, 2013 |
Peer Reviewed | Peer Reviewed |
Public URL | https://nottingham-repository.worktribe.com/output/1010761 |
Publisher URL | http://ukci.cs.manchester.ac.uk/files/Proceedings.pdf |
Additional Information | Published in: Proceedings of the 11th UK Workshop on Computational Intelligence. Manchester : School of Computer Science, University of Manchester, 2011. http://ukci.cs.manchester.ac.uk/files/Proceedings.pdf |
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