Applied Sciences (Jul 2020)

A New Under-Sampling Method to Face Class Overlap and Imbalance

  • Angélica Guzmán-Ponce,
  • Rosa María Valdovinos,
  • José Salvador Sánchez,
  • José Raymundo Marcial-Romero

DOI
https://doi.org/10.3390/app10155164
Journal volume & issue
Vol. 10, no. 15
p. 5164

Abstract

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Class overlap and class imbalance are two data complexities that challenge the design of effective classifiers in Pattern Recognition and Data Mining as they may cause a significant loss in performance. Several solutions have been proposed to face both data difficulties, but most of these approaches tackle each problem separately. In this paper, we propose a two-stage under-sampling technique that combines the DBSCAN clustering algorithm to remove noisy samples and clean the decision boundary with a minimum spanning tree algorithm to face the class imbalance, thus handling class overlap and imbalance simultaneously with the aim of improving the performance of classifiers. An extensive experimental study shows a significantly better behavior of the new algorithm as compared to 12 state-of-the-art under-sampling methods using three standard classification models (nearest neighbor rule, J48 decision tree, and support vector machine with a linear kernel) on both real-life and synthetic databases.

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