A Recommender System (RS) filters a large amount of information to identify the items that are likely to be more interesting and attractive to a user. Recommendations are inferred on the basis of different user profile characteristics, in most cases including explicit ratings on a sample of suggested elements. RS research highlights that profile length, i. e., the number of collected ratings, is positively correlated to the accuracy of recommendations, which is considered an important quality factor for RSs. Still, gathering ratings adds a burden on the user, which may negatively affect the UX. A design tension seems to exist, induced by two conflicting requirements -- to raise accuracy by increasing the profile length, and to make the prof...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Recommender systems provide users with content they might be interested in. Conventionally, recommen...
One of the unresolved issues when designing a recommender system is the number of ratings – i.e., th...
One of the unresolved issues when designing a recommender system is the number of ratings -- i.e., t...
The growth of the social web poses new challenges and opportunities for recommender systems. The goa...
The growth of the social web poses new challenges and opportunities for recommender systems. The goa...
Research on recommender systems typically focuses on the accuracy of prediction algorithms. Because ...
Part 1: Long and Short PapersInternational audienceA number of researches in the Recommender Systems...
Recommender system evaluation usually focuses on the overall effectiveness of the algorithms, either...
In this study, we investigate how individual users' rating characteristics aect the user-level perfo...
A number of researches in the Recommender Systems (RSs) domain suggest that the recommendations that...
Abstract. Traditional recommender system evaluation focuses on rais-ing the accuracy, or lowering th...
Recommender Systems (RSs) aim at helping users search large amounts of contents and identify more ef...
Recommendation systems have shown great potential to help users in order to find interesting and rel...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Recommender systems provide users with content they might be interested in. Conventionally, recommen...
One of the unresolved issues when designing a recommender system is the number of ratings – i.e., th...
One of the unresolved issues when designing a recommender system is the number of ratings -- i.e., t...
The growth of the social web poses new challenges and opportunities for recommender systems. The goa...
The growth of the social web poses new challenges and opportunities for recommender systems. The goa...
Research on recommender systems typically focuses on the accuracy of prediction algorithms. Because ...
Part 1: Long and Short PapersInternational audienceA number of researches in the Recommender Systems...
Recommender system evaluation usually focuses on the overall effectiveness of the algorithms, either...
In this study, we investigate how individual users' rating characteristics aect the user-level perfo...
A number of researches in the Recommender Systems (RSs) domain suggest that the recommendations that...
Abstract. Traditional recommender system evaluation focuses on rais-ing the accuracy, or lowering th...
Recommender Systems (RSs) aim at helping users search large amounts of contents and identify more ef...
Recommendation systems have shown great potential to help users in order to find interesting and rel...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Recommender systems provide users with content they might be interested in. Conventionally, recommen...