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Information retrieval / Social information processing / Collaboration / Recommender system / Collaborative filtering / Expertise finding / Social networking service / Wireless mesh network / Science / Information science / Knowledge
Date: 2014-07-19 18:54:35
Information retrieval
Social information processing
Collaboration
Recommender system
Collaborative filtering
Expertise finding
Social networking service
Wireless mesh network
Science
Information science
Knowledge

Recommending Collaborators using Social Features and MeSH Terms Danielle H. Lee & Peter Brusilovsky School of Information Sciences, University of Pittsburgh 135 N. Bellefield Ave., Pittsburgh, PAhyl12, peterb]@

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