Published September 1, 2021 | Version v1
Journal article Open

A novel imbalanced data classification approach using both under and over sampling

  • 1. Bozorgmehr University of Qaenat
  • 2. Department of Civil Engineering

Description

The performance of the data classification has encountered a problem when the data distribution is imbalanced. This fact results in the classifiers tend to the majority class which has the most of the instances. One of the popular approaches is to balance the dataset using over and under sampling methods. This paper presents a novel pre-processing technique that performs both over and under sampling algorithms for an imbalanced dataset. The proposed method uses the SMOTE algorithm to increase the minority class. Moreover, a cluster-based approach is performed to decrease the majority class which takes into consideration the new size of the minority class. The experimental results on 10 imbalanced datasets show the suggested algorithm has better performance in comparison to previous approaches.

Files

50 2785.pdf

Files (825.9 kB)

Name Size Download all
md5:5f86b36a3d600bf22d49ec8d88cf8922
825.9 kB Preview Download