Recommender System research has evolved to focus on developing algorithms capable of high performance in online systems. This development calls for a new evaluation infrastructure that supports multi-dimensional evaluation of recommender systems. Today's researchers should analyze algorithms with respect to a variety of aspects including predictive performance and scalability. Researchers need to subject algorithms to realistic conditions in online A/B tests. We introduce two resources supporting such evaluation methodologies: the new data set of stream recommendation interactions released for CLEF NewsREEL 2017, and the new Open Recommendation Platform (ORP). The data set allows researchers to study a stream recommendation problem closely ...
Running in its third year at CLEF, NewsREEL challenged participants to develop news recommendation ...
News recommender systems provide users with access to news stories that they find interesting and re...
In real-world scenarios, recommenders face non-functional requirements of technical nature and must...
Recommender System research has evolved to focus on developing algorithms capable of high performanc...
Recommender System research has evolved to focus on developing algorithms capable of high performanc...
This tutorial addressed two trending topics in the field of recommender systems research, namely A/B...
Successful news recommendation requires facing the challenges of dynamic item sets, contextual item ...
Providing high-quality news recommendations is a challenging task because the set of potentially rel...
Successful news recommendation requires facing the challenges of dynamic item sets, contextual item ...
Successful news recommendation requires facing the challenges of dynamic item sets, contextual item...
News recommender systems provide users with access to news stories that they find interesting and re...
In real-world scenarios, recommenders face non-functional requirements of technical nature and must ...
The CLEF NewsREEL challenge allows researchers to evaluate news recommendation algorithms both onli...
CLEF 2014 Conference and Labs of the Evaluation Forum: Information Access Evaluation Meets Multiling...
Recommender systems have gained a lot of popularity in recent times due to their application in the...
Running in its third year at CLEF, NewsREEL challenged participants to develop news recommendation ...
News recommender systems provide users with access to news stories that they find interesting and re...
In real-world scenarios, recommenders face non-functional requirements of technical nature and must...
Recommender System research has evolved to focus on developing algorithms capable of high performanc...
Recommender System research has evolved to focus on developing algorithms capable of high performanc...
This tutorial addressed two trending topics in the field of recommender systems research, namely A/B...
Successful news recommendation requires facing the challenges of dynamic item sets, contextual item ...
Providing high-quality news recommendations is a challenging task because the set of potentially rel...
Successful news recommendation requires facing the challenges of dynamic item sets, contextual item ...
Successful news recommendation requires facing the challenges of dynamic item sets, contextual item...
News recommender systems provide users with access to news stories that they find interesting and re...
In real-world scenarios, recommenders face non-functional requirements of technical nature and must ...
The CLEF NewsREEL challenge allows researchers to evaluate news recommendation algorithms both onli...
CLEF 2014 Conference and Labs of the Evaluation Forum: Information Access Evaluation Meets Multiling...
Recommender systems have gained a lot of popularity in recent times due to their application in the...
Running in its third year at CLEF, NewsREEL challenged participants to develop news recommendation ...
News recommender systems provide users with access to news stories that they find interesting and re...
In real-world scenarios, recommenders face non-functional requirements of technical nature and must...