8th IEEE International Conference on Collaborative Computing: Networking, Applications and Worksharing

Research Article

Exploring Social Approach to Recommend Talks at Research Conferences

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  • @INPROCEEDINGS{10.4108/icst.collaboratecom.2012.250415,
        author={Danielle Lee and Peter Brusilovsky},
        title={Exploring Social Approach to Recommend Talks at Research Conferences},
        proceedings={8th IEEE International Conference on Collaborative Computing: Networking, Applications and Worksharing},
        publisher={IEEE},
        proceedings_a={COLLABORATECOM},
        year={2012},
        month={12},
        keywords={content-boosted recommendation cold start problem social networks social network-based recommendations hybrid recommendation conferencenavigator},
        doi={10.4108/icst.collaboratecom.2012.250415}
    }
    
  • Danielle Lee
    Peter Brusilovsky
    Year: 2012
    Exploring Social Approach to Recommend Talks at Research Conferences
    COLLABORATECOM
    ICST
    DOI: 10.4108/icst.collaboratecom.2012.250415
Danielle Lee1,*, Peter Brusilovsky1
  • 1: University of Pittsburgh
*Contact email: hyl12@pitt.edu

Abstract

This paper investigates various recommendation algorithms to recommend relevant talks to attendees of research conferences. We explored three sources of information to generate recommendations: users’ preference about items (i.e. talks), users’ social network and content of items. In order to find out what is the best recommendation approach, we explored a diverse set of algorithms from non-personalized community vote-based recommendations and collaborative filtering recommend-ations to hybrid recommendations such as social network-based recommendation boosted by content information of items. We found that social network-based recommendations fused with content information and non-personalized community vote-based recommendations performed the best. Moreover, for cold-start users who have insufficient number of items to express their preferences, the recommendations based on their social connections generated significantly better predictions than other approaches.