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Academic Report of SMS 2025-41

Title:Handling Class Imbalance and Small Sample Issues: Foundation, Algorithms, and Applications

Abstract:In big data analysis, it is usually difficult to collect high-quality labels, and this leads to two issues in deep learning, namely, the class imbalance issue and the small sample issue. In this talk, we first introduce some background knowledge about the deep learning from the perspectives of concepts, techniques, applications and challenges. Then, we introduce three state-of-the-art algorithms for solving the class imbalance and small sample issues: 1) a novel contrastive adversarial network for minor-class data augmentation; 2) a novel subdomain-alignment data augmentation approach; and 3) a novel prototype-assisted contrastive adversarial network for weak-shot learning. All the three algorithms are applied to pipeline fault diagnosis, which outperform existing ones. Finally, we conclude our main contributions and some future directions.


Speaker:Wang Zidong,Brunel University.

Date:2:30 p.m., 2025-7-27 (Sunday).

Venue: 扬州大学瘦西湖校区数学学院208报告厅

腾讯会议:219-315-762

Inviter:Liu Yurong

Organizer:School of Mathematical

Students and teachers are welcome.

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