The CLEF NewsREEL challenge is a campaign-style evaluation lab allowing participants to evaluate and optimize news recommender algorithms. The goal is to create an algorithm that is able to generate news items that users would click, respecting a strict time constraint. The lab challenges participants to compete in either a "living lab" (Task 1) or perform an evaluation that replays recorded streams (Task 2). In this report, we discuss the objectives and challenges of the NewsREEL lab, summarize last year's campaign and outline the main research challenges that can be addressed by participating in NewsREEL 2016
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...
News recommender systems provide users with access to news stories that they find interesting and re...
News reader struggle as they face ever increasing numbers of articles. Digital news portals are bec...
News reader struggle as they face ever increasing numbers of articles. Digital news portals are bec...
Running in its third year at CLEF, NewsREEL challenged participants to develop news recommendation ...
Running in its third year at CLEF, NewsREEL challenged participants to develop news recommendation ...
This paper summarises objectives, organisation, and results of the first news recommendation evalua...
The CLEF NewsREEL challenge allows researchers to evaluate news recommendation algorithms both onli...
Providing high-quality news recommendations is a challenging task because the set of potentially rel...
This paper summarises objectives, organisation, and results of the first news recommendation evaluat...
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...
textabstractSuccessful news recommendation requires facing the challenges of dynamic item sets, cont...
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...
News recommender systems provide users with access to news stories that they find interesting and re...
News reader struggle as they face ever increasing numbers of articles. Digital news portals are bec...
News reader struggle as they face ever increasing numbers of articles. Digital news portals are bec...
Running in its third year at CLEF, NewsREEL challenged participants to develop news recommendation ...
Running in its third year at CLEF, NewsREEL challenged participants to develop news recommendation ...
This paper summarises objectives, organisation, and results of the first news recommendation evalua...
The CLEF NewsREEL challenge allows researchers to evaluate news recommendation algorithms both onli...
Providing high-quality news recommendations is a challenging task because the set of potentially rel...
This paper summarises objectives, organisation, and results of the first news recommendation evaluat...
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...
textabstractSuccessful news recommendation requires facing the challenges of dynamic item sets, cont...
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...
News recommender systems provide users with access to news stories that they find interesting and re...