Matus Medo, Yi-Cheng Zhang, Tao Zhou
posted by Matúš Medo
(21 October 2009)
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(499 views, 177 downloads, 4 comments )
Most news recommender systems try to identify users' interests and news'
attributes and use them to obtain recommendations. Here we propose an adaptive
model which combines similarities in users' rating patterns with epidemic-like
spreading of news on an evolving network. We study the model by computer
agent-based simulations, measure its performance and discuss its robustness
against bias and malicious behavior. Subject to the approval fraction of news
recommended, the proposed model outperforms the widely adopted recommendation
of news according to their absolute or relative popularity. This model provides
a general social mechanism for recommender systems and may find its
applications also in other types of recommendation.
The Econophysics Forum
welcomes your comments
I must vote this paper :-). I like it. I asked for models...you produced one.
Marcel Blattner
Thank you, Marcel.
Although I can not understand .......
http://www.atelier.fr/reseaux/10/21102009/recommandation-article-contenu-approbation-site-information-comportement-passe-digg-38873-.html
News about the news model !!!
EPL 88 (2009) 38005