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LOGO: a long-short user interest integration in personalized news recommendation

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Published:23 October 2011Publication History

ABSTRACT

In this paper, we initially provide an experimental study on the evolution of user interests in real-world news recommender systems, and then propose a novel recommendation approach, in which the long-term and short-term reading preferences of users are seamlessly integrated when recommending news items. Given a hierarchy of newly-published news articles, news groups that the user might prefer are differentiated using the long-term profile, and then in each selected news group, a list of news items are chosen based on the short-term user profile. Extensive empirical experiments on a collection of news articles obtained from various popular news websites demonstrate the efficacy of our method.

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      • Published in

        cover image ACM Conferences
        RecSys '11: Proceedings of the fifth ACM conference on Recommender systems
        October 2011
        414 pages
        ISBN:9781450306836
        DOI:10.1145/2043932

        Copyright © 2011 ACM

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        Publication History

        • Published: 23 October 2011

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