Exploiting neighborhood knowledge for single document summarization and keyphrase extraction

@article{Wan2010ExploitingNK,
  title={Exploiting neighborhood knowledge for single document summarization and keyphrase extraction},
  author={Xiaojun Wan and Jianguo Xiao},
  journal={ACM Trans. Inf. Syst.},
  year={2010},
  volume={28},
  pages={8:1-8:34}
}
Document summarization and keyphrase extraction are two related tasks in the IR and NLP fields, and both of them aim at extracting condensed representations from a single text document. Existing methods for single document summarization and keyphrase extraction usually make use of only the information contained in the specified document. This article proposes using a small number of nearest neighbor documents to improve document summarization and keyphrase extraction for the specified document… Expand
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