A Selective Dynamic Sampling Back-Propagation Approach for Handling the Two-Class Imbalance Problem

作者:Alejo Roberto*; Monroy de Jesus Juan; Pacheco Sanchez Juan H; Lopez Gonzalez Erika; Antonio Velazquez Juan A
来源:Applied Sciences-Basel, 2016, 6(7): 200.
DOI:10.3390/app6070200

摘要

In this work, we developed a Selective Dynamic Sampling Approach (SDSA) to deal with the class imbalance problem. It is based on the idea of using only the most appropriate samples during the neural network training stage. The average samplesare the best to train the neural network, they are neither hard, nor easy to learn, and they could improve the classifier performance. The experimental results show that the proposed method is a successful method to deal with the two-class imbalance problem. It is very competitive with respect to well-known over-sampling approaches and dynamic sampling approaches, even often outperforming the under-sampling and standard back-propagation methods. SDSA is a very simple method for automatically selecting the most appropriate samples (average samples) during the training of the back-propagation, and it is very efficient. In the training stage, SDSA uses significantly fewer samples than the popular over-sampling approaches and even than the standard back-propagation trained with the original dataset.

  • 出版日期2016-7