首页|Discriminative feature generation for classification of imbalanced data

Discriminative feature generation for classification of imbalanced data

扫码查看
The data imbalance problem is a frequent bottleneck in the classification performance of neural networks. In this paper, we propose a novel supervised discriminative feature generation (DFG) method for a minority class dataset. DFG is based on the modified structure of a generative adversarial network consisting of four independent networks: generator, discriminator, feature extractor, and classifier. To augment the selected discriminative features of the minority class data by adopting an attention mechanism, the generator for the class-imbalanced target task is trained, and the feature extractor and classifier are regularized using the pre-trained features from a large source data. The experimental results show that the DFG generator enhances the augmentation of the label-preserved and diverse features, and the classification results are significantly improved on the target task. The feature generation model can contribute greatly to the development of data augmentation methods through discriminative feature generation and supervised attention methods. (c) 2021 Elsevier Ltd. All rights reserved.

Imbalanced classificationGenerative adversarial networksDiscriminative feature generationTransfer learningFeature map regularizationDATA SETSSMOTE

Suh, Sungho、Lukowicz, Paul、Lee, Yong Oh

展开 >

Europe Forschungsgesell mbH

TU Kaiserslautern

2022

Pattern Recognition

Pattern Recognition

EISCI
ISSN:0031-3203
年,卷(期):2022.122
  • 8
  • 61