Recent developments in user evaluation of recommender systems have brought forth powerful new tools for understanding what makes recommendations effective and useful. We apply these methods to understand how users evaluate recommendation lists for the purpose of selecting an algorithm for finding movies. This paper reports on an experiment in which we asked users to compare lists produced by three common collaborative filtering algorithms on the dimensions of novelty, diversity, accuracy, satisfaction, and degree of personalization, and to select a recommender that they would like to use in the future. We find that satisfaction is negatively dependent on novelty and positively dependent on diversity in this setting, and that satisfaction pr...
The growth of the social web poses new challenges and opportunities for recommender systems. The goa...
Recommender systems have been developed to address the abundance of choice we face in taste domains ...
\u3cp\u3eRecommender systems typically use collaborative filtering: information from your preference...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recommender system evaluation usually focuses on the overall effectiveness of the algorithms, either...
Abstract. Many e-commerce sites use a recommendation system to filter the specific in-formation that...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
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...
Recommender systems have been developed to address the abundance of choice we face in taste domains ...
\u3cp\u3eRecommender systems typically use collaborative filtering: information from your preference...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
Recommender system evaluation usually focuses on the overall effectiveness of the algorithms, either...
Abstract. Many e-commerce sites use a recommendation system to filter the specific in-formation that...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
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...
Recommender systems have been developed to address the abundance of choice we face in taste domains ...
\u3cp\u3eRecommender systems typically use collaborative filtering: information from your preference...