• Title of article

    Biased support vector machine and weighted-smote in handling class imbalance problem

  • Author/Authors

    Hartono , STMIK IBBI- Medan, Indonesia , Sitompul, Opim Salim Universitas Sumatera Utara - Indonesia , Tulus, Universitas Sumatera Utara - Indonesia , Nababan, Erna Budhiarti Universitas Sumatera Utara - Indonesia

  • Pages
    7
  • From page
    21
  • To page
    27
  • Abstract
    Class imbalance occurs when instances in a class are much higher than in other classes. This machine learning major problem can affect the predicted accuracy. Support Vector Machine (SVM) is robust and precise method in handling class imbalance problem but weak in the bias data distribution, Biased Support Vector Machine (BSVM) became popular choice to solve the problem. BSVM provide better control sensitivity yet lack accuracy compared to general SVM. This study proposes the integration of BSVM and SMOTEBoost to handle class imbalance problem. Non Support Vector (NSV) sets from negative samples and Support Vector (SV) sets from positive samples will undergo a Weighted-SMOTE process. The results indicate that implementation of Biased Support Vector Machine and Weighted-SMOTE achieve better accuracy and sensitivity.
  • Keywords
    Negative Samples , Positive Samples , Borderline-SMOTE , Biased Support Vector Machine , Class Imbalance
  • Journal title
    International Journal of Advances in Intelligent Informatics
  • Serial Year
    2018
  • Record number

    2601168