Recommender systems are useful techniques for solving the problem of information overload. Collaborative Filtering (CF) is the most successful approach for recommendation. This approach focuses on previous indicate preferences which is known for its traditional problems such as cold-start, sparsity and hacking. For solving the problem of hacking and improving the accuracy, trust-based CF methods have been proposed previously. These methods focused on trust values among the users. Nonetheless, most existing approaches use trust as a factor independent from time which we think that trust value between users is dynamic; hence it change over time. For this reason, we used friendship time and proposed a novel temporal-trust based approach called...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Collaborative Filtering (CF) evaluation centres on accuracy: researchers validate improvements over ...
Part 2: Full PapersInternational audienceIn this work, we explore the benefits of combining clusteri...
While Collaborative Filtering (CF) recommender systems, which focus on previous indicate preferences...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Increasing availability of information has furthered the need for recommender systems across a varie...
Recommender systems based on collaborative filtering have been well studied in both industry and aca...
Recommendation systems or recommender system (RSs) is one of the hottest topics nowadays, which is w...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
Abstract: Recommender systems (RS) aim to predict items that users would appreciate, over a list of ...
Abstract: Collaborative filtering is one of the most widely used techniques for recommendation syste...
Recently a recommender system has been applied to solve several different problems that face the use...
Traditional collaborative filtering (CF) based recommender systems on the basis of user similarity o...
These days, due to growing the e-commerce sites, access to information about items is easier than pa...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Collaborative Filtering (CF) evaluation centres on accuracy: researchers validate improvements over ...
Part 2: Full PapersInternational audienceIn this work, we explore the benefits of combining clusteri...
While Collaborative Filtering (CF) recommender systems, which focus on previous indicate preferences...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Increasing availability of information has furthered the need for recommender systems across a varie...
Recommender systems based on collaborative filtering have been well studied in both industry and aca...
Recommendation systems or recommender system (RSs) is one of the hottest topics nowadays, which is w...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
Abstract: Recommender systems (RS) aim to predict items that users would appreciate, over a list of ...
Abstract: Collaborative filtering is one of the most widely used techniques for recommendation syste...
Recently a recommender system has been applied to solve several different problems that face the use...
Traditional collaborative filtering (CF) based recommender systems on the basis of user similarity o...
These days, due to growing the e-commerce sites, access to information about items is easier than pa...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Collaborative Filtering (CF) evaluation centres on accuracy: researchers validate improvements over ...
Part 2: Full PapersInternational audienceIn this work, we explore the benefits of combining clusteri...