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Should I Stay or Should I Go? Improving Event Recommendation in the Social Web

Cena, Federica ; Likavec, Silvia ; Lombardi, Ilaria ; Picardi, Claudia

Interacting with Computers, 2016, Vol. 28(1), pp.55-72 [Tạp chí có phản biện]

ISSN: 0953-5438 ; E-ISSN: 1873-7951 ; DOI: 10.1093/iwc/iwu029

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  • Nhan đề:
    Should I Stay or Should I Go? Improving Event Recommendation in the Social Web
  • Tác giả: Cena, Federica ; Likavec, Silvia ; Lombardi, Ilaria ; Picardi, Claudia
  • Chủ đề: Social Recommendation (Social Computing) ; Social Networking Systems ; User Studies ; Event Recommendation ; Contextual Factors
  • Là 1 phần của: Interacting with Computers, 2016, Vol. 28(1), pp.55-72
  • Mô tả: This paper focuses on the recommendation of events in the Social Web, and addresses the problem of finding if, and to which extent, certain features, which are peculiar to events, are relevant in predicting the users' interests and should thereby be taken into account in recommendation. We consider, in particular, three ‘additional’ features that are usually shown to users within social networking environments: reachability from the user location, the reputation of the event in the community and the participation of the user's friends. Our study is aimed at evaluating whether adding this information to the description of the event type and topic, and including in the user profile the information on the relevance of these factors, can improve our capability to predict the user's interest. We approached the problem by carrying out two surveys with users, who were asked to express their interest in a number of events. We then trained, by means of linear regression, a scoring function defined as a linear combination of the different factors, whose goal was to predict the user scores. We repeated this experiment under different hypotheses on the additional factors, in order to assess their relevance by comparing the predictive capabilities of the resulting functions. The compared results of our experiments show that additional factors, if properly weighted, can improve the prediction accuracy with an error reduction of 4.1%. The best results were obtained by combining content-based factors and additional factors in a proportion of ∼10:4.
  • Số nhận dạng: ISSN: 0953-5438 ; E-ISSN: 1873-7951 ; DOI: 10.1093/iwc/iwu029

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