An Improved Algorithm for Imbalanced Data and Small Sample Size Classification

  • Hu Y
  • Guo D
  • Fan Z
  • et al.
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Abstract

Traditional classification algorithms perform not very well on imbalanced data sets and small sample size. To deal with the problem, a novel method is proposed to change the class distribution through adding virtual samples, which are generated by the windowed regression over-sampling (WRO) method. The proposed method WRO not only reflects the additive effects but also reflects the multiplicative effect between samples. A comparative study between the proposed method and other over-sampling methods such as synthetic minority over-sampling technique (SMOTE) and borderline over-sampling (BOS) on UCI datasets and Fourier transform infrared spectroscopy (FTIR) data set is provided. Experimental results show that the WRO method can achieve better performance than other methods.

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APA

Hu, Y., Guo, D., Fan, Z., Dong, C., Huang, Q., Xie, S., … Xie, Q. (2015). An Improved Algorithm for Imbalanced Data and Small Sample Size Classification. Journal of Data Analysis and Information Processing, 03(03), 27–33. https://doi.org/10.4236/jdaip.2015.33004

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