A New Under-Sampling Method to Face Class Overlap and Imbalance
Autor/es
Guzmán Ponce, Angélica; Valdovinos Rosas, Rosa María; Sánchez Garreta, José Salvador; Marcial Romero, José RaymundoFecha
2020-07-27Disciplina/s
Ingeniería, Industria y ConstrucciónMateria/s
Class imbalanceClass overlap
Under-sampling
Clustering
DBSCAN
Minimum spanning tree
Resumen
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 dat...





