Decision Making and Recommendation Acceptance Issues in Recommender Systems

نویسندگان

  • Francesco Ricci
  • Giovanni Semeraro
  • Marco Degemmis
  • Pasquale Lops
چکیده

 Many Internet sites and media companies (Amazon.com, YouTube, Netflix, Yahoo, Tripadvisor, Last.fm, IMDb) are developing and deploying RSs as part of the services they provide to their subscribers;  At institutions of higher education around the world, undergraduate and graduate courses are dedicated entirely to RSs; tutorials on RSs are very popular at computer science conferences;  There have been several special issues in academic journals covering research and developments in the RS field (AI Communications 2008; IEEE Intelligent Systems 2007; International Journal of Computer Science and Applications 2006; ACM Transactions on Computer-Human Interaction 2005; ACM Transactions on Information Systems 2004).

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تاریخ انتشار 2011