Towards recommendation to trust-based user groups in social tagging systems

Group recommender systems use various strategies to aggregate users' preferences into a common social welfare function which would maximize the satisfaction of all members. Group recommendation is essentially useful for websites, especially for social tagging systems. In this paper, we initially experiment with various rank aggregation strategies for group recommendation in social tagging systems. Specially, we consider trust-based user groups detected by community discovery based on trustable social relations. Also, we present hybrid similarity to estimate the relevance between users and resources. According to experiments on Delicious and Lastfm datasets, CombMAX, CombSUM and CombANZ are more suitable for aggregating individual preference into a group preference in social tagging systems. And group recommendation can achieve better effect than individual recommendation based on our proposed model.

[1]  Pablo Castells,et al.  Extracting multilayered Communities of Interest from semantic user profiles: Application to group modeling and hybrid recommendations , 2011, Comput. Hum. Behav..

[2]  Silvia N. Schiaffino,et al.  Entertainment recommender systems for group of users , 2011, Expert Syst. Appl..

[3]  Tsvi Kuflik,et al.  Workshop on information heterogeneity and fusion in recommender systems (HetRec 2010) , 2010, RecSys '10.

[4]  Shlomo Berkovsky,et al.  Group-based recipe recommendations: analysis of data aggregation strategies , 2010, RecSys '10.

[5]  Pablo Castells,et al.  Group Recommender Systems: New Perspectives in the Social Web , 2012, Recommender Systems for the Social Web.

[6]  Ludovico Boratto,et al.  State-of-the-Art in Group Recommendation and New Approaches for Automatic Identification of Groups , 2011, Information Retrieval and Mining in Distributed Environments.

[7]  Jong-Hak Lee,et al.  Analyses of multiple evidence combination , 1997, SIGIR '97.

[8]  Cong Yu,et al.  Group Recommendation: Semantics and Efficiency , 2009, Proc. VLDB Endow..

[9]  Tsvi Kuflik,et al.  Second workshop on information heterogeneity and fusion in recommender systems (HetRec2011) , 2011, RecSys '11.

[10]  A. Clauset Finding local community structure in networks. , 2005, Physical review. E, Statistical, nonlinear, and soft matter physics.

[11]  Francesco Ricci,et al.  Group recommendations with rank aggregation and collaborative filtering , 2010, RecSys '10.

[12]  Jennifer Widom,et al.  Scaling personalized web search , 2003, WWW '03.

[13]  Maria Soledad Pera,et al.  A group recommender for movies based on content similarity and popularity , 2013, Inf. Process. Manag..

[14]  Gediminas Adomavicius,et al.  Improving Aggregate Recommendation Diversity Using Ranking-Based Techniques , 2012, IEEE Transactions on Knowledge and Data Engineering.

[15]  Barry Smyth,et al.  Generating recommendations for consensus negotiation in group personalization services , 2011, Personal and Ubiquitous Computing.

[16]  Xiaowei Xu,et al.  SCAN: a structural clustering algorithm for networks , 2007, KDD '07.

[17]  Shlomo Berkovsky,et al.  Aggregation Trade Offs in Family Based Recommendations , 2009, Australasian Conference on Artificial Intelligence.