There are inherent problems with evaluating the accuracy of recommender systems. Commonly-used metrics for recommender systems depend on the number of recommendations produced and the number of hidden items withheld, making it difficult to directly compare one system with another. In this paper we compare recommender algorithms using two datasets; the standard MovieLens set and an e-commerce dataset that has implicit ratings based on browsing behaviour. We introduce a measure that aids in the comparison and show how to compare results with baseline predictions based on random recommendation selections
In the world of recommender systems, it is a common practice to use public available datasets from d...
Recommender system evaluation usually focuses on the overall effectiveness of the algorithms, either...
Abstract Recommender systems are now popular both commercially and in the research community, where ...
Abstract. In academic studies, the evaluation of recommender system (RS) algorithms is often limited...
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 are an emerging technology that helps consumers find interesting products and us...
Recommender systems are among the most popular tools used by online community these days. Traditiona...
Recommender systems are among the most popular tools used by online community these days. Traditiona...
Due to the explosion of available information on the Internet, the need for effective means of acces...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
textabstractIn the evaluation of recommender systems, the quality of recommendations made by a newly...
Part 1: Long and Short PapersInternational audienceA number of researches in the Recommender Systems...
Recommendation systems are important part of electronic commerce, where appropriate items are recomm...
The aim of a recommender system is to suggest to the user certain products or services that most lik...
In the world of recommender systems, it is a common practice to use public available datasets from d...
Recommender system evaluation usually focuses on the overall effectiveness of the algorithms, either...
Abstract Recommender systems are now popular both commercially and in the research community, where ...
Abstract. In academic studies, the evaluation of recommender system (RS) algorithms is often limited...
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 are an emerging technology that helps consumers find interesting products and us...
Recommender systems are among the most popular tools used by online community these days. Traditiona...
Recommender systems are among the most popular tools used by online community these days. Traditiona...
Due to the explosion of available information on the Internet, the need for effective means of acces...
Recent developments in user evaluation of recommender systems have brought forth powerful new tools ...
textabstractIn the evaluation of recommender systems, the quality of recommendations made by a newly...
Part 1: Long and Short PapersInternational audienceA number of researches in the Recommender Systems...
Recommendation systems are important part of electronic commerce, where appropriate items are recomm...
The aim of a recommender system is to suggest to the user certain products or services that most lik...
In the world of recommender systems, it is a common practice to use public available datasets from d...
Recommender system evaluation usually focuses on the overall effectiveness of the algorithms, either...
Abstract Recommender systems are now popular both commercially and in the research community, where ...