Exploiting Social Information in Pairwise Preference Recommender System


  • Crícia Z. Felício Instituto Federal de Educação, Ciência e Tecnologia Triângulo Mineiro
  • Klérisson V. R. Paixão Federal University of Uberlândia http://klerisson.github.io
  • Guilherme Alves Federal University of Uberlândia http://www.guilhermealves.eti.br/
  • Sandra de Amo Federal University of Uberlândia http://www.deamo.prof.ufu.br/
  • Philippe Preux University of Lille e INRIA Lille - Nord Europe




Pairwise preferences, Social Network, Social Recommender System


There has been an explosion of social approaches that leverage recommender systems, mainly to deal with cold start problems. However, most of the approaches are designed to handle explicit user’s ratings. We have envisioned Social PrefRec, a social recommender that applies user preference mining and clustering techniques to incorporate social information on the pairwise preference recommenders. Our approach relies on the hypothesis that user’s preference is similar to or influenced by their connected friends. This study reports experiments evaluating the recommendation quality of this method to handle the cold start problem. Moreover, we investigate the effects of several social metrics on pairwise preference recommendations. We also demonstrate the effectiveness of our proposed social preference learning approach in contrast to state-of-the-art social recommenders, expanding our understanding of how contextual social information affects pairwise recommenders.


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How to Cite

Felício, C. Z., R. Paixão, K. V., Alves, G., de Amo, S., & Preux, P. (2017). Exploiting Social Information in Pairwise Preference Recommender System. Journal of Information and Data Management, 7(2), 99. https://doi.org/10.5753/jidm.2016.1581



KDMiLe 2015