Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper concentrates on the benefits of recommending news items using a domain ontology instead of using a term-based approach. For this purpose, we propose Athena, which is an extension to the existing Hermes framework. Athena employs a user profile to store terms or concepts found in news items browsed by the user. Based on this information, the framework uses a traditional method based on TF-IDF, and several ontology-based methods to recommend new articles to the user. The paper concludes with the evaluation of the different methods, which show that the ontology-based method, that we propose in this paper, performs better than the content-based approac...
Hermes is an ontology-based framework for building news personalization services, which focuses on n...
International audienceThis paper focuses on a recommender system of economic news articles. Its obje...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
Nowadays, news feeds provide Web users with access to an unlimited amount of news items, however onl...
News items play an increasingly important role in the current business decision processes. Due to th...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-540-70987-9_34Pro...
AbstractTo deal with the challenge of information overload, in this paper, we propose a financial ne...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
Hermes is an ontology-based framework for building news personalization services. This framework con...
Traditionally, content-based recommendation is performed using term occurrences, which are leveraged...
This chapter describes Hermes, a framework for building personalized news services using Semantic We...
Hermes is an ontology-based framework for building news personalization services, which focuses on n...
International audienceThis paper focuses on a recommender system of economic news articles. Its obje...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
Nowadays, news feeds provide Web users with access to an unlimited amount of news items, however onl...
News items play an increasingly important role in the current business decision processes. Due to th...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-540-70987-9_34Pro...
AbstractTo deal with the challenge of information overload, in this paper, we propose a financial ne...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
Hermes is an ontology-based framework for building news personalization services. This framework con...
Traditionally, content-based recommendation is performed using term occurrences, which are leveraged...
This chapter describes Hermes, a framework for building personalized news services using Semantic We...
Hermes is an ontology-based framework for building news personalization services, which focuses on n...
International audienceThis paper focuses on a recommender system of economic news articles. Its obje...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...