Corpus ID: 3763511

Expert Finding in Heterogeneous Bibliographic Networks with Locally-trained Embeddings

  title={Expert Finding in Heterogeneous Bibliographic Networks with Locally-trained Embeddings},
  author={Huan Gui and Qi Zhu and Liyuan Liu and A. Zhang and Jiawei Han},
  • Huan Gui, Qi Zhu, +2 authors Jiawei Han
  • Published 2018
  • Computer Science
  • ArXiv
  • Expert finding is an important task in both industry and academia. It is challenging to rank candidates with appropriate expertise for various queries. In addition, different types of objects interact with one another, which naturally forms heterogeneous information networks. We study the task of expert finding in heterogeneous bibliographical networks based on two aspects: textual content analysis and authority ranking. Regarding the textual content analysis, we propose a new method for query… CONTINUE READING
    6 Citations

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