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Item-based collaborative filtering recommendation algorithms

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Published:01 April 2001Publication History
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                cover image ACM Conferences
                WWW '01: Proceedings of the 10th international conference on World Wide Web
                May 2001
                770 pages
                ISBN:1581133480
                DOI:10.1145/371920

                Copyright © 2001 ACM

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                • Published: 1 April 2001

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