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Revisiting multi-dimensional classification from a dimension-wise perspective

04.22.24 | Higher Education Press

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While the class imbalance issue has been extensively investigated within the multi-class paradigm, its study in the multi-dimensional classification (MDC) context has been limited due to the imbalance shift phenomenon. A sample's classification as a minor or major class instance becomes ambiguous when it belongs to a minor class in one labeling dimension (LD) and a major class in another. Previous MDC methodologies predominantly emphasized instance-wise criteria, neglecting prediction capabilities from a dimension aspect, i.e., the average classification performance across LDs.

To solve the problems, a research team led by De-Chuan Zhan from LAMDA , Nanjing University published their new research on Multi-dimensional Classification in Frontiers of Computer Science co-published by Higher Education Press and Springer Nature.

The team asserts the significance of dimension-wise metrics in real-world MDC applications and introduce two such metrics. Furthermore, the team observes imbalanced class distributions within each LD and propose a novel Imbalance-Aware fusion Model (IMAM) for addressing the MDC problem.

In the research, IMAM first decomposes the task into multiple multi-class classification problems, creating imbalance-aware deep models for each LD separately. This straightforward method performs well across LDs without sacrificing performance in instance-wise criteria. Subsequently, IMAM employs LD-wise models as multiple teachers and transfer their knowledge across all LDs to a unified student model.

Extensive experiments are conducted on various MDC datasets. The results indicate that the proposed IMAM is superior to others in a big gap.

DOI: 10.1007/s11704-023-3272-9

Frontiers of Computer Science

10.1007/s11704-023-3272-9

Experimental study

Not applicable

Revisiting multi-dimensional classification from a dimension-wise perspective

14-Mar-2024

Keywords

Article Information

Contact Information

Rong Xie
Higher Education Press
xierong@hep.com.cn

Source

How to Cite This Article

APA:
Higher Education Press. (2024, April 22). Revisiting multi-dimensional classification from a dimension-wise perspective. Brightsurf News. https://www.brightsurf.com/news/LDEPRO68/revisiting-multi-dimensional-classification-from-a-dimension-wise-perspective.html
MLA:
"Revisiting multi-dimensional classification from a dimension-wise perspective." Brightsurf News, Apr. 22 2024, https://www.brightsurf.com/news/LDEPRO68/revisiting-multi-dimensional-classification-from-a-dimension-wise-perspective.html.