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Communication Dans Un Congrès Année : 2012

Analyzing Recommender System's Performance Fluctuations across Users

Résumé

Recommender systems (RS) are designed to assist users by recommending them items they should appreciate. User based RS ex- ploit users behavior to generate recommendations. As a matter of fact, RS performance fluctuates across users. We are interested in analyzing the characteristics and behavior that make a user receives more accu- rate/inaccurate recommendations than another. We use a hybrid model of collaborative filtering and trust-aware rec- ommenders. This model exploits user's preferences (represented by both item ratings and trusting other users) to generate its recommendations. Intuitively, the performance of this model is influenced by the number of preferences the user expresses. In this work we focus on other character- istics of user's preferences than the number. Concerning item ratings, we touch on the rated items popularity, and the difference between the at- tributed rate and the item's average rate. Concerning trust relationships, we touch on the reputation of the trusted users.
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hal-00776932 , version 1 (17-01-2013)

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Charif Haydar, Azim Roussanaly, Anne Boyer. Analyzing Recommender System's Performance Fluctuations across Users. International Cross-Domain Conference and Workshop on Availability, Reliability, and Security (CD-ARES), Aug 2012, Prague, Czech Republic. pp.390-402, ⟨10.1007/978-3-642-32498-7_29⟩. ⟨hal-00776932⟩
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