“…Undersampling, oversampling, re-sampling has the majority/minority class examples randomly removed/duplicated respectively until a particular class distribution ratio is met (Liu, Wu, & Zhou, 2006Weiss, 2004). The synthetic minority oversampling technique (SMOTE) (Chawla, Bowyer, Hall, & Kegelmeyer, 2002) is a powerful method that has shown a great deal of success in SVM related applications (Gouripeddi et al, 2009;Maciejewski & Stefanowski, 2011;Wang, 2008). In general, sampling methods are applicable to various type of SVM algorithms being used (Batuwita & Palade, 2010) for data modeling, thus they are potential choices for SVM class imbalance learning, but they are not able to completely solve the class imbalance problem.…”