In this paper, we define reusable inference steps for content-based recommender systems based on semantically-enriched collections. We show an instantiation in the case of recommending artworks and concepts based on a museum domain ontology and a user profile consisting of rated artworks and rated concepts. The recommendation task is split into four inference steps: realization, classification by concepts, classification by instances, and retrieval. Our approach is evaluated on real user rating data. We compare the results with the standard content-based recommendation strategy in terms of accuracy and discuss the added values of providing serendipitous recommendations and supporting more complete explanations for recommended items
International audienceThis paper provides a service-oriented such solution which explore the ontolog...
Metadata vocabularies provide various semantic relationsbetween concepts. For content-based recommen...
In the thesis we compare several models for prediction of user preferences. The focus is mainly on C...
In this paper, we define reusable inference steps for content-based recommender systems based on sem...
In this paper, we define reusable inference steps for content-based recommender systems based on sem...
The main objective of the CHIP (Cultural Heritage Information Personalization) project is to demonst...
Content-based semantics-driven recommender systems are often used in the small-scale news recommenda...
Recommender systems suggest items by exploiting the interactions of the users with the system (e.g.,...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...
Content-based recommender systems try to recommend items similar to those a given user has liked in ...
This article presents the CHIP demonstrator1 for providing personalized access to digital museum col...
Metadata vocabularies provide various semantic relations between concepts. For content-based recomme...
International audienceThis paper provides a service-oriented such solution which explore the ontolog...
Metadata vocabularies provide various semantic relationsbetween concepts. For content-based recommen...
In the thesis we compare several models for prediction of user preferences. The focus is mainly on C...
In this paper, we define reusable inference steps for content-based recommender systems based on sem...
In this paper, we define reusable inference steps for content-based recommender systems based on sem...
The main objective of the CHIP (Cultural Heritage Information Personalization) project is to demonst...
Content-based semantics-driven recommender systems are often used in the small-scale news recommenda...
Recommender systems suggest items by exploiting the interactions of the users with the system (e.g.,...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...
Content-based recommender systems try to recommend items similar to those a given user has liked in ...
This article presents the CHIP demonstrator1 for providing personalized access to digital museum col...
Metadata vocabularies provide various semantic relations between concepts. For content-based recomme...
International audienceThis paper provides a service-oriented such solution which explore the ontolog...
Metadata vocabularies provide various semantic relationsbetween concepts. For content-based recommen...
In the thesis we compare several models for prediction of user preferences. The focus is mainly on C...