Gene Selection and Classification Using Non-linear Kernel Support Vector Machines Based on Gene Expression Data
In microarray-based cancer classification, feature selection and classification method is an important issue owing to large number of variables (gene expressions) and small number of experimental conditions. For disease diagnosing, classifiers performance has direct impact on final results. In this paper, a new method of gene selection and classification by using nonlinear kernel support vector machine(SVM) based on recursive performance elimination(RFE) is proposed. It is demonstrated experimentally that our method has better comprehensive performance than other linear classification methods, such as linear kernel support vector machine and fisher linear discriminant analysis (FLDA), also better than some non-linear classification methods, such as least square support vector machine(LS-SVM) using non-linear kernel. In the experiments, besides test set, leave-one-out algorithm is also used to test the classifiers generalization performance. AML/ALL dataset and hereditary breast cancer dataset are used, which are available on internet.
Data classification Support vector machine Gene selection
Zhang Qizhong
College of electrical engineering Zhejiang university School of automation Hangzhou dianzi university Hangzhou, Zhejiang Province, China
国际会议
北京
英文
1634-1639
2007-05-23(万方平台首次上网日期,不代表论文的发表时间)