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Human–computer interaction / Information retrieval / Science / Collaboration / Web 2.0 / GroupLens Research / Recommender system / Collaborative filtering / Information filtering system / Information science / Information / Collective intelligence
Date: 2007-09-05 13:54:20
Human–computer interaction
Information retrieval
Science
Collaboration
Web 2.0
GroupLens Research
Recommender system
Collaborative filtering
Information filtering system
Information science
Information
Collective intelligence

Recommenders Everywhere: The WikiLens Community-Maintained Recommender System Dan Frankowski, Shyong K. (Tony) Lam, Shilad Sen, F. Maxwell Harper, Scott Yilek, Michael Cassano, John Riedl GroupLens Research, University o

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