A User-and Item-Aware Weighting Scheme for Combining Predictive User Models

Hybridising user models can improve predictive accuracy However, research on linearly combining predictive user models (e.g., used in recommender systems) has often made the implicit assumption that the individual models perform uniformly across the user and item space, using static model weights when computing a weighted average of the predictions of the individual models This paper proposes a weighting scheme which combines user- and item-specific weight vectors to compute user- and item-aware model weights The proposed hybridisation approach adaptively estimates online the model parameters that are specific to a target user as information about this user becomes available Hence, it is particularly well-suited for domains where little or no information regarding the target user's preferences or interests is available at the time of offline model training The proposed weighting scheme is evaluated by applying it to a real-world scenario from the museum domain Our results show that in our domain, our hybridisation approach attains a higher predictive accuracy than the individual component models Additionally, our approach outperforms a non-adaptive hybrid model that uses static model weights.

[1]  Alfred Kobsa,et al.  The Adaptive Web, Methods and Strategies of Web Personalization , 2007, The Adaptive Web.

[2]  Ingrid Zukerman,et al.  Using Keyword-Based Approaches to Adaptively Predict Interest in Museum Exhibits , 2009, Australasian Conference on Artificial Intelligence.

[3]  Dunja Mladenic,et al.  Web Mining: From Web to Semantic Web , 2004, Lecture Notes in Computer Science.

[4]  Ingrid Zukerman,et al.  Personalised Pathway Prediction , 2010, UMAP.

[5]  Xin Jin,et al.  Semantically Enhanced Collaborative Filtering on the Web , 2003, EWMF.

[6]  George M. Giaglis,et al.  A hybrid approach for improving predictive accuracy of collaborative filtering algorithms , 2007, User Modeling and User-Adapted Interaction.

[7]  Lora Aroyo,et al.  Cultivating Personalized Museum Tours Online and On-Site , 2009 .

[8]  Yehuda Koren,et al.  Matrix Factorization Techniques for Recommender Systems , 2009, Computer.

[9]  Ingrid Zukerman,et al.  Spatial Processes for Recommender Systems , 2009, IJCAI.

[10]  Robin D. Burke,et al.  Hybrid Web Recommender Systems , 2007, The Adaptive Web.

[11]  Ingrid Zukerman,et al.  Non-intrusive Personalisation of the Museum Experience , 2009, UMAP.

[12]  Mark Claypool,et al.  Combining Content-Based and Collaborative Filters in an Online Newspaper , 1999, SIGIR 1999.

[13]  Xiaodong Li,et al.  AI 2009: Advances in Artificial Intelligence, 22nd Australasian Joint Conference, Melbourne, Australia, December 1-4, 2009. Proceedings , 2009, Australasian Conference on Artificial Intelligence.

[14]  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.

[15]  R. Polikar,et al.  Ensemble based systems in decision making , 2006, IEEE Circuits and Systems Magazine.

[16]  Tsvi Kuflik,et al.  Adaptive, intelligent presentation of information for the museum visitor in PEACH , 2007, User Modeling and User-Adapted Interaction.