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Science / Information science / Human–computer interaction / Information retrieval / Collaborative information seeking / Information seeking behavior / Recommender system / Collaborative filtering / Sensemaking / Information / Collaboration / Groupware
Date: 2014-07-19 18:51:50
Science
Information science
Human–computer interaction
Information retrieval
Collaborative information seeking
Information seeking behavior
Recommender system
Collaborative filtering
Sensemaking
Information
Collaboration
Groupware

Searcher Actions and Strategies in Asynchronous Collaborative Search Robert Capra, Annie T. Chen, Evonne McArthur, Natalie Davis School of Information and Library Science University of North Carolina at Chapel Hill {rcap

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