Context-Aware Recommendation via Graph-Based Contextual Modeling and Postfiltering

Context-aware recommender systems generate more relevant recommendations by adapting them to the specific contextual situation of the user and have become one of the most active research areas in the recommender systems. However, there remains a key issue as how contextual information can be used to create intelligent and useful recommender systems. To assist the development and use of context-aware recommendation capabilities, we propose a graph-based framework to model and incorporate contextual information into the recommendation process in an advantageous way. A contextual graph-based relevance measure (CGR) is specifically designed to assess the potential relevance between the target user and the items further used to make an item recommendation. We also propose a probabilistic-based postfiltering strategy to refine the recommendation results as contextual conditions are explicitly given in a query. Depending on the experimental results on the two datasets, the CGR-based method is much superior to the traditional collaborative filtering methods, and the proposed postfiltering method is much effective in context-aware recommendation scenario.

[1]  Sangkeun Lee,et al.  Random walk based entity ranking on graph for multidimensional recommendation , 2011, RecSys '11.

[2]  Gediminas Adomavicius,et al.  Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions , 2005, IEEE Transactions on Knowledge and Data Engineering.

[3]  Hong Chen,et al.  GPUTENSOR: Efficient tensor factorization for context-aware recommendations , 2015, Inf. Sci..

[4]  Francesco Ricci,et al.  Exploiting the Semantic Similarity of Contextual Situations for Pre-filtering Recommendation , 2013, UMAP.

[5]  Jurij F. Tasic,et al.  Predicting and Detecting the Relevant Contextual Information in a Movie-Recommender System , 2013, Interact. Comput..

[6]  Michele Gorgoglione,et al.  Incorporating context into recommender systems: an empirical comparison of context-based approaches , 2012, Electronic Commerce Research.

[7]  Gediminas Adomavicius,et al.  Context-aware recommender systems , 2008, RecSys '08.

[8]  Hao Wu,et al.  Enhancing Context-Aware Recommendation via a Unified Graph Model , 2014, 2014 International Conference on Identification, Information and Knowledge in the Internet of Things.

[9]  Yehuda Koren,et al.  Factor in the neighbors: Scalable and accurate collaborative filtering , 2010, TKDD.

[10]  R. Law,et al.  Helpful Reviewers in TripAdvisor, an Online Travel Community , 2011 .

[11]  Matthias Baldauf,et al.  A survey on context-aware systems , 2007, Int. J. Ad Hoc Ubiquitous Comput..

[12]  Ioannis Konstas,et al.  On social networks and collaborative recommendation , 2009, SIGIR.

[13]  Hai Jin,et al.  A Suggested Framework for Exploring Contextual Information to Evaluate and Recommend Services , 2008, GPC.

[14]  Francesco Ricci,et al.  Experimental evaluation of context-dependent collaborative filtering using item splitting , 2013, User Modeling and User-Adapted Interaction.

[15]  Bamshad Mobasher,et al.  Differential Context Relaxation for Context-Aware Travel Recommendation , 2012, EC-Web.

[16]  Hao Wu,et al.  On improving aggregate recommendation diversity and novelty in folksonomy-based social systems , 2014, Personal and Ubiquitous Computing.

[17]  Iván Cantador,et al.  Context-Aware Movie Recommendations: An Empirical Comparison of Pre-filtering, Post-filtering and Contextual Modeling Approaches , 2013, EC-Web.

[18]  Marko Tkalcic,et al.  Database for contextual personalization , 2011 .

[19]  Nuria Oliver,et al.  Multiverse recommendation: n-dimensional tensor factorization for context-aware collaborative filtering , 2010, RecSys '10.

[20]  Alexander Tuzhilin,et al.  Comparing context-aware recommender systems in terms of accuracy and diversity , 2012, User Modeling and User-Adapted Interaction.

[21]  Bernd Ludwig,et al.  Context relevance assessment and exploitation in mobile recommender systems , 2012, Personal and Ubiquitous Computing.

[22]  Hao Wu,et al.  Item recommendation in collaborative tagging systems via heuristic data fusion , 2015, Knowl. Based Syst..