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Articles

Feature selection for multi-class problems by using pairwise-class and all-class techniques

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Pages 381-394 | Received 16 Feb 2009, Accepted 12 Apr 2009, Published online: 10 Mar 2011
 

Abstract

Feature selection has been a key technology in massive data processing, e.g. in microarray data analysis with few samples but high-dimensional genes. One common problem in multi-class microarray data analysis is the unbalanced recognition or prediction accuracies among classes, which usually leads to poor system performance. One of the main reasons is the unfair feature (gene) selection method. In this paper, a novel feature selection framework by using pairwise-class and all-class techniques (namely FrPA) is proposed to balance the performance among classes and improve the average accuracy. The feature (gene) rank list on all classes and the lists on each pair of classes are all taken into consideration during feature selection. The strategy of round-robin is embedded into the framework to select final features from the different rank lists. Experimental results on several microarray data sets show that FrPA helps to achieve higher classification accuracy and balance the performance among classes.

Acknowledgements

This work was supported by the Natural Science Foundation of China under grant no. 61005006 and 60873129, Shanghai Leading Academic Discipline Project (B004), and the Shanghai Rising-Star Programme under grant no. 08QA1403200.

Notes

Additional information

Notes on contributors

Mingyu You

1

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