Recommending Sources in News Recommender Systems

Recommender systems aim to deliver the most suitable item to the user without the manual effort of the user. It is possible to see the applications of recommender systems in a lot of different domains like music, movies, shopping and news. Recommender system development have many challenges. But the dynamic and diverse environment of news domain makes news recommender systems a little bit more challenging than other domains. During the recommendation process of news articles, personalization and analysis of news content plays an important role. But beyond recommending the articles itself, we think that where the news come from is also very important. Different news sources have their own style, view and way of expression and they may give the user a complete, balanced and wide perspective of news stories. In this paper we explain the need for including news sources in news recommendation and propose a news source recommendation method by finding out the implicit relations and similarities between news sources by using semantics and association

[1]  Uzay Kaymak,et al.  News personalization using the CF-IDF semantic recommender , 2011, WIMS '11.

[2]  Bamshad Mobasher,et al.  Robustness of collaborative recommendation based on association rule mining , 2007, RecSys '07.

[3]  Peter Vojtáš,et al.  Semantic Information Filtering-Beyond Collaborative Filtering , 2011 .

[4]  Pasquale Lops,et al.  Content-based Recommender Systems: State of the Art and Trends , 2011, Recommender Systems Handbook.

[5]  Yolaine Bourda,et al.  A collaborative and semantic-based approach for recommender systems , 2010, 2010 10th International Conference on Intelligent Systems Design and Applications.

[6]  Dongyan Zhao,et al.  Personalized News Recommendation Using Ontologies Harvested from the Web , 2013, WAIM.

[7]  Hong Chen,et al.  Using Quantitative Association Rules in Collaborative Filtering , 2005, WAIM.

[8]  Yi Zhang,et al.  Interaction and Personalization of Criteria in Recommender Systems , 2010, UMAP.

[9]  Daniel T. Larose,et al.  Discovering Knowledge in Data: An Introduction to Data Mining , 2005 .

[10]  Jon Atle Gulla,et al.  Data Sets and News Recommendation , 2014, UMAP Workshops.

[11]  Kevin C. Almeroth,et al.  Tailored news in the palm of your hand: a multi-perspective transparent approach to news recommendation , 2013, WWW.

[12]  Flavius Frasincar,et al.  Semantics-based news recommendation , 2012, WIMS '12.

[13]  Eduardo Peis,et al.  Semantic Recommender Systems. Analysis of the state of the topic , 2008 .

[14]  Riza Cenk Erdur,et al.  A Survey on Challenges and Methods in News Recommendation , 2014, WEBIST.

[15]  Flavius Frasincar,et al.  Ontology-based news recommendation , 2010, EDBT '10.

[16]  Tao Luo,et al.  Effective personalization based on association rule discovery from web usage data , 2001, WIDM '01.

[17]  Pablo Castells,et al.  Semantic contextualisation in a news recommender system , 2009 .