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SIGIR 2017 : The 40th International ACM SIGIR Conference on Research and Development in Information Retrieval

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Conference Series : International ACM SIGIR Conference on Research and Development in Information Retrieval
 
Link: http://sigir.org/sigir2017/
 
When Aug 7, 2017 - Aug 11, 2017
Where Shinjuku, Tokyo, Japan.
Abstract Registration Due Jan 17, 2017
Submission Deadline Jan 24, 2017
Notification Due Apr 11, 2017
Categories    information retrieval
 

Call For Papers

SIGIR is the premier international forum for the presentation of new research results and for the demonstration of new systems and techniques in information retrieval. The conference consists of five days of full papers, short papers, demonstrations, tutorials and workshops focused on research and development in the area of information retrieval, as well as an industry track and social events.

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