QuoteRec: Toward Quote Recommendation for Writing

@article{Tan2018QuoteRecTQ,
  title={QuoteRec: Toward Quote Recommendation for Writing},
  author={Jiwei Tan and Xiaojun Wan and Hui Liu and J. Xiao},
  journal={ACM Trans. Inf. Syst.},
  year={2018},
  volume={36},
  pages={34:1-34:36}
}
Quote is a language phenomenon of transcribing the statement of someone else, such as a proverb and a famous saying. An appropriate usage of quote usually equips the expression with more elegance and credibility. However, there are times when we are eager to stress our idea by citing a quote, while nothing relevant comes to mind. Therefore, it is exciting to have a recommender system which provides quote recommendations while we are writing. This article extends previous study of quote… Expand
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