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TabNet 기반 생성적 적대 신경망(GAN)을 활용한 고용 빅데이터의 불균형 클래스 최적화 모델링 KCI 등재

Enhancing Imbalanced Binary Classification in Employment Big Data Using TabNet-Driven Generative Adversarial Networks

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  • URLhttps://db.koreascholar.com/Article/Detail/435686
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한국기계기술학회지 (Journal of the Korean Society of Mechanical Technology)
한국기계기술학회 (Korean Society of Mechanical Technology)
초록

Abstract Handling imbalanced datasets in binary classification, especially in employment big data, is challenging. Traditional methods like oversampling and undersampling have limitations. This paper integrates TabNet and Generative Adversarial Networks (GANs) to address class imbalance. The generator creates synthetic samples for the minority class, and the discriminator, using TabNet, ensures authenticity. Evaluations on benchmark datasets show significant improvements in accuracy, precision, recall, and F1-score for the minority class, outperforming traditional methods. This integration offers a robust solution for imbalanced datasets in employment big data, leading to fairer and more effective predictive models.

저자
  • 변해원(인제대학교) | Haewon Byeon Corresponding author