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            A Method for Privacy-preserving Collaborative Filtering Recommendations
            
            
               Christos K. Georgiadis (University of Macedonia, Greece)  
              
             
            
            
               Nikolaos Polatidis (University of Macedonia, Greece)  
              
             
            
            
               Haralambos Mouratidis (University of Brighton, United Kingdom)  
              
             
            
            
               Elias Pimenidis (University of the West of England, United Kingdom)  
              
             
                    
            
              Abstract: With the continuous growth of the Internet and   the progress of electronic commerce the issues of product   recommendation and privacy protection are becoming increasingly   important. Recommender Systems aim to solve the information overload   problem by providing accurate recommendations of items to   users. Collaborative filtering is considered the most widely used   recommendation method for providing recommendations of items or   users to other users in online environments. Additionally,   collaborative filtering methods can be used with a trust network,   thus delivering to the user recommendations from both a database of   ratings and from users who the person who made the request knows and   trusts. On the other hand, the users are having privacy concerns and   are not willing to submit the required information (e.g., ratings   for products), thus making the recommender system unusable.  In this   paper, we propose (a) an approach to product recommendation that is   based on collaborative filtering and uses a combination of a ratings   network with a trust network of the user to provide recommendations   and (b) 'neighbourhood privacy' that employs a modified   privacy-aware role-based access control model that can be applied to   databases that utilize recommender systems. Our proposed approach   (1) protects user privacy with a small decrease in the accuracy of   the recommendations and (2) uses information from the trust network   to increase the accuracy of the recommendations, while, (3)   providing privacy-preserving recommendations, as accurate as the   recommendations provided without the privacy-preserving approach or   the method that increased the accuracy applied. 
             
            
              Keywords: collaborative filtering, privacy, recommender systems, trust network 
             
            Categories: H.3.3, H.3.5, K.4.1  
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