ZHAO Zixiang, WANG Guangliang, LI Xiaodong. An Improved SVM Based Under-Sampling Method for #br#
Classifying Imbalanced Data[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2012,51(6).
ZHAO Zixiang, WANG Guangliang, LI Xiaodong. An Improved SVM Based Under-Sampling Method for #br#
Classifying Imbalanced Data[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2012,51(6).DOI:
Support Vector Machine (SVM) has prominent advantages in solving some problems on petty and nonlinear datasets
but it is unsatisfying in tackling with imbalanced datasets. Random under-sampling has been a widely used method to improve SVM's performance on imbalanced data
but its stability is easily influenced by the nature of randomness. A modified SVM based on under-sampling method is presented to classify imbalanced data. Compared with the random under-sampling technique
it is shown through experiments on natural datasets that the new proposed under-sampling method is more stable in classifying imbalanced data
and exhibits improved SVM performance in classifying imbalanced data for many cases.
关键词
支持向量机不平衡数据欠采样稳定性
Keywords
support vector machineimbalanced dataunder-samplingstability