Title
Real-time news recommender system
Abstract
In this demo we present a robust system for delivering real-time news recommendation to the user based on the user's history of the past visits to the site, current user's context and popularity of stories. Our system is running live providing real-time recommendations of news articles. The system handles overspecializing as we recommend categories as opposed to items, it implicitly uses collaboration by taking into account user context and popular items and, it can handle new users by using context information. A unique characteristic of our system is that it prefers freshness over relevance, which is important for recommending news articles in real-world setting as addressed here. We experimentally compare the proposed approach as implemented in our system against several state-of-the-art alternatives and show that it significantly outperforms them.
Year
DOI
Venue
2010
10.1007/978-3-642-15939-8_38
ECML/PKDD (3)
Keywords
Field
DocType
real-time recommendation,past visit,context information,real-time news recommendation,account user context,robust system,current user,popular item,new user,news article,real-time news recommender system,collaborative filter,news,collaborative filtering,recommender system,real time,svm
Recommender system,World Wide Web,Collaborative filtering,Computer science,Support vector machine,Popularity,Multimedia
Conference
Volume
ISSN
ISBN
6323
0302-9743
3-642-15938-9
Citations 
PageRank 
References 
3
0.60
3
Authors
3
Name
Order
Citations
PageRank
Blaž Fortuna11279.55
Carolina Fortuna216118.19
Dunja Mladenic31484170.14