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Information science / Collaboration / Humancomputer interaction / Information retrieval / Recommender systems / Human communication / Social information processing / Collective intelligence / Collaborative filtering / Computer-supported cooperative work / Personalization / GroupLens Research
Date: 2018-10-25 09:08:20
Information science
Collaboration
Humancomputer interaction
Information retrieval
Recommender systems
Human communication
Social information processing
Collective intelligence
Collaborative filtering
Computer-supported cooperative work
Personalization
GroupLens Research

GroupLink: Group Event Recommendations Using Personal Digital Traces Honghao Wei Tsinghua University Beijing, 100084, China

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