24th Signal Processing and Communication Application Conference (SIU), Zonguldak, Türkiye, 16 - 19 Mayıs 2016, ss.605-608
Learning from imbalanced data sets is an important problem frequently encountered in the application of classification problems. Instances of this type of problem is usually labeled with the label of class majority and minority class instances will be ignored. In this study, an ensemble based method is proposed for problems of imbalanced data set. The results obtained were compared to alternative traditional classifier (support vector machine (svm) and k nearest neighbor classifier (knn)). Bagging -based ensemble classifier eliminates the problem of bias. Thus minority class are classified correctly and improving the application performance is provided.