Query Expansion by Word Embedding in the Suggestion Track of CLEF 2016 Social Book Search Lab

نویسندگان

  • Shih-Hung Wu
  • Yi-Hsiang Hsieh
  • Liang-Pu Chen
  • Ping-Che Yang
چکیده

The Social Book Search (SBS) Lab is part of CLEF 2016 lab series. This is the fourth time that the CYUT CSIE team attends the SBS track. The content of topics has changed a little bit by the organizer; therefore, we make necessary modification on our system, which is based on keyword searching and ranking by social features. This year, we design a query expansion module which is based on word2vec, a word embedding toolkit. The new module helps our system to get better performance in suggestion track.

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تاریخ انتشار 2016