Noise Avoidance SMOTE in Ensemble Learning for Imbalanced Data

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Abstract

Class imbalance is a common problem in many real-world applications. To deal with class imbalance, several techniques, including resampling and ensemble approaches, have been proposed and resampling and ensemble methods have been proven effective for imbalanced data. Moreover, hybrid methods that combine resampling and ensemble have been verified to be highly effective in dealing with imbalance problems. this study proposes new hybrid sampling/ensemble algorithms based on a modification of SMOTE, called NASBoost and NASBagging, which avoids selecting noise samples in the minority class while maintaining diversity among training sets. The proposed sampling method introduces new measures to identify samples that may generate noisy synthetic samples during sampling in SMOTE. Experimental results on 16 imbalanced datasets show that the hybrid of the proposed sampling procedure and ensemble algorithms improves the classification performance by preventing the generation of noise while allowing samples in the minority class to be evenly chosen.

Original languageEnglish
Pages (from-to)143250-143265
Number of pages16
JournalIEEE Access
Volume9
DOIs
StatePublished - 2021

Keywords

  • Class imbalance
  • classification complexity
  • ensemble learning
  • oversampling
  • SMOTE

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