Corpus ID: 218487076

Joint Embedding of Words and Category Labels for Hierarchical Multi-label Text Classification

@article{Zhao2020JointEO,
  title={Joint Embedding of Words and Category Labels for Hierarchical Multi-label Text Classification},
  author={J. Zhao and Yinglong Ma},
  journal={arXiv: Neural and Evolutionary Computing},
  year={2020}
}
  • J. Zhao, Yinglong Ma
  • Published 2020
  • Computer Science
  • arXiv: Neural and Evolutionary Computing
  • Text classification has become increasingly challenging due to the continuous refinement of classification label granularity and the expansion of classification label scale. To address that, some research has been applied onto strategies that exploit the hierarchical structure in problems with a large number of categories. At present, hierarchical text classification (HTC) has received extensive attention and has broad application prospects. Making full use of the relationship between parent… CONTINUE READING

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