会议专题

A Kernel-based Sampling to Train SVM with Imbalanced Data Set

Out-class sampling working together with in-class sampling is a popular strategy to train Support Vector Machine (SVM) classifier with imbalanced data sets. However, it may lead to some inconsistency because the sampling strategy and SVM work in different space. This paper presents a kernel-based over-sampling approach to overcome the drawback. The method first preprocesses the data using both in-class and out-class sampling to generate minority instances in the feature space, then the pre-images of the synthetic samples are found based on a distance relation between input space and feature space. Finally, these pre-images are appended to the original minority class data set to train a SVM. Experiments on real data sets indicate that compared with existing over-sampling technique, the samples generated by the proposed strategy have the higher quality. As a result, the effectiveness of classification by SVM with imbalanced data sets is improved.

imbalance iInterpolation kernel pre-image

ZhiQiang ZENG ShunZhi ZHU

Department of Computer Science and Technology Xiamen University of Technology Xiamen,China

国际会议

2011 IEEE 12th International Conference on Computer-Aided Industrial Design & Conceptual Design(2011年第12届国际计算机辅助工业设计与概念设计学术会议)

重庆

英文

1-5

2011-12-01(万方平台首次上网日期,不代表论文的发表时间)