International audienceRecommendation systems have been integrated into the majority of large online systems. They tailor those systems to individual users by filtering and ranking information according to user profiles. This adaptation process influences the way users interact with the system and, as a consequence, increases the difficulty of evaluating a recommendation algorithm with historical data (via offline evaluation). This paper analyses this evaluation bias and proposes a simple item weighting solution that reduces its impact. The efficiency of the proposed solution is evaluated on real world data extracted from Viadeo professional social network
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Relevant information stored in boundless pool of data source are required for the recommendation pro...
In online platforms, recommender systems are responsible for directing users to relevant content. In...
International audienceRecommendation systems have been integrated into the majority of large online ...
International audienceRecommendation systems have been integrated into the majority of large online ...
International audienceRecommendation systems have been integrated into the majority of large online ...
Datasets used for the offline evaluation of recommender systems are collected through user interacti...
In response to the quantity of information available on the Internet, many online service providers ...
Recommendation systems are often evaluated based on user’s interactions that were collected from an ...
Recommender systems are an increasingly important technology and researchers have recently argued fo...
Recommender systems are filters that suggest products of interest to customers, which may positively...
Throughout the years, numerous recommendation algorithms have been developed to address the informat...
Offline evaluations of recommender systems attempt to estimate users’ satisfaction with recommendati...
Abstract. In academic studies, the evaluation of recommender system (RS) algorithms is often limited...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Relevant information stored in boundless pool of data source are required for the recommendation pro...
In online platforms, recommender systems are responsible for directing users to relevant content. In...
International audienceRecommendation systems have been integrated into the majority of large online ...
International audienceRecommendation systems have been integrated into the majority of large online ...
International audienceRecommendation systems have been integrated into the majority of large online ...
Datasets used for the offline evaluation of recommender systems are collected through user interacti...
In response to the quantity of information available on the Internet, many online service providers ...
Recommendation systems are often evaluated based on user’s interactions that were collected from an ...
Recommender systems are an increasingly important technology and researchers have recently argued fo...
Recommender systems are filters that suggest products of interest to customers, which may positively...
Throughout the years, numerous recommendation algorithms have been developed to address the informat...
Offline evaluations of recommender systems attempt to estimate users’ satisfaction with recommendati...
Abstract. In academic studies, the evaluation of recommender system (RS) algorithms is often limited...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Relevant information stored in boundless pool of data source are required for the recommendation pro...
In online platforms, recommender systems are responsible for directing users to relevant content. In...