Improving the Quality of Generating Imbalance Data in GANs through an Exhaustive Contrastive Learning Method 


Vol. 50,  No. 4, pp. 295-305, Apr.  2023
10.5626/JOK.2023.50.4.295


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  Abstract

As the performance of deep learning algorithms has improved, they are being used as a way to solve various problems in the real world. In the case of data that reflect the real world, imbalance data may occur depending on the frequency of occurrence of events or the difficulty of collection. Data with an inconsistent number of classes that make up the data are called imbalance data, and in particular, it is difficult to learn the minority classes with relatively little data through Deep Learning algorithms. Recently, Generative Adversarial Nets (GANs) have been applied as a method for data augmentation, and self-supervised learning-based pre-learning has been proposed for minority class learning. However, because class information of imbalance data is utilized in the process of learning the Generative Model, the quality of generated data is poor due to poor learning of minority classes. To solve this problem, this paper proposes a similarity-based exhaustive contrast learning method. The proposed method is quantitatively evaluated through the Frechet Inception Distance (FID) and Inception Score (IS). The method proposed in this paper confirmed the performance improvement of the Frechet Inception Distance of 16.32 and the Inception Score of 0.38, as compared to the existing method.


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  Cite this article

[IEEE Style]

H. Shin, S. Lee, K. Lee, "Improving the Quality of Generating Imbalance Data in GANs through an Exhaustive Contrastive Learning Method," Journal of KIISE, JOK, vol. 50, no. 4, pp. 295-305, 2023. DOI: 10.5626/JOK.2023.50.4.295.


[ACM Style]

Hyeonjun Shin, Sangbaek Lee, and Kyuchul Lee. 2023. Improving the Quality of Generating Imbalance Data in GANs through an Exhaustive Contrastive Learning Method. Journal of KIISE, JOK, 50, 4, (2023), 295-305. DOI: 10.5626/JOK.2023.50.4.295.


[KCI Style]

신현준, 이상백, 이규철, "철저한 대조 학습 방법을 통한 생성적 적대 신경망의 불균형 데이터 생성 품질 향상," 한국정보과학회 논문지, 제50권, 제4호, 295~305쪽, 2023. DOI: 10.5626/JOK.2023.50.4.295.


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