Applied Sciences (Oct 2024)

Application of Label Correlation in Multi-Label Classification: A Survey

  • Shan Huang,
  • Wenlong Hu,
  • Bin Lu,
  • Qiang Fan,
  • Xinyao Xu,
  • Xiaolei Zhou,
  • Hao Yan

DOI
https://doi.org/10.3390/app14199034
Journal volume & issue
Vol. 14, no. 19
p. 9034

Abstract

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Multi-Label Classification refers to the classification task where a data sample is associated with multiple labels simultaneously, which is widely used in text classification, image classification, and other fields. Different from the traditional single-label classification, each instance in Multi-Label Classification corresponds to multiple labels, and there is a correlation between these labels, which contains a wealth of information. Therefore, the ability to effectively mine and utilize the complex correlations between labels has become a key factor in Multi-Label Classification methods. In recent years, research on label correlations has shown a significant growth trend internationally, reflecting its importance. Given that, this paper presents a survey on the label correlations in Multi-Label Classification to provide valuable references and insights for future researchers. The paper introduces multi-label datasets across various fields, elucidates and categorizes the concept of label correlations, emphasizes their utilization in Multi-Label Classification and associated subproblems, and provides a prospect for future work on label correlations.

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