Issue |
Wuhan Univ. J. Nat. Sci.
Volume 29, Number 1, February 2024
|
|
---|---|---|
Page(s) | 51 - 58 | |
DOI | https://doi.org/10.1051/wujns/2024291051 | |
Published online | 15 March 2024 |
Computer Science
CLC number: TP391
Learning Label Correlations for Multi-Label Online Passive Aggressive Classification Algorithm
Nanjing NARI Intelligent Transport Technology Co., Ltd., Nanjing 210061, Jiangsu, China
Received:
25
July
2023
Label correlations are an essential technique for data mining that solves the possible correlation problem between different labels in multi-label classification. Although this technique is widely used in multi-label classification problems, batch learning deals with most issues, which consumes a lot of time and space resources. Unlike traditional batch learning methods, online learning represents a promising family of efficient and scalable machine learning algorithms for large-scale datasets. However, existing online learning research has done little to consider correlations between labels. On the basis of existing research, this paper proposes a multi-label online learning algorithm based on label correlations by maximizing the interval between related labels and unrelated labels in multi-label samples. We evaluate the performance of the proposed algorithm on several public datasets. Experiments show the effectiveness of our algorithm.
Key words: label correlations / passive aggressive / multi-label classification / online learning
Cite this article: ZHANG Yongwei. Learning Label Correlations for Multi-Label Online Passive Aggressive Classification Algorithm[J]. Wuhan Univ J of Nat Sci, 2024, 29(1): 51-58.
Biography: ZHANG Yongwei, male, Master, Engineer, research directions: machine learning, and artificial intelligence technology, etc. E-mail: zywei_1988@163.com
Fundation item: Supported by the State Grid Technology Item (52460D230002)
© Wuhan University 2023
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