International audienceCase-Based Reasoning (CBR) is a problem solving methodology that reuses the knowledge of past experiences to solve new problems. It's a knowledge-based technique that has been introduced to the recommendation field to allow reasoning on domain knowledge and to generate more accurate recommendations. If CBR helps suggesting items that meet the users' search criteria, it has the disadvantage of being domain-dependent (all the reasoning process is generally based on hard-coded domain knowledge) and generating less personalized recommendations. In this paper, we propose an approach for a generic and personalized CBR-based recommender system. First, we use a generic ontology to formalize all the knowledge required during th...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
In this paper, we define reusable inference steps for content-based recommender systems based on sem...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
International audienceCase-Based Reasoning (CBR) is a problem solving methodology that reuses the kn...
Personalization and recommendation systems are a solution to the problem of content overload, especi...
This paper presents a unifying framework to model casebased reasoning recommender systems (CBR-RS). ...
International audienceThis paper provides a service-oriented such solution which explore the ontolog...
Not AvailableThis paper proposes the design of a recommender system that uses knowledge stored in th...
25th International Symposium on Computer and Information Sciences, ISCIS 2010 -- 22 September 2010 t...
In recent years, e-learning recommender systems has attracted great attention as a solution towards ...
International audienceThe recent development of theWorldWideWeb, information, and communications tec...
Recommender systems have achieved success in a variety of domains, as a means to help users in infor...
International audienceThe use of personalized recommender systems to assist users in the selection o...
In our work, we have presented two widely used recommendation systems. We have presented a context-a...
Case-based reasoning (CBR), as one of the problem solving paradigms in the field of Artificial Intel...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
In this paper, we define reusable inference steps for content-based recommender systems based on sem...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
International audienceCase-Based Reasoning (CBR) is a problem solving methodology that reuses the kn...
Personalization and recommendation systems are a solution to the problem of content overload, especi...
This paper presents a unifying framework to model casebased reasoning recommender systems (CBR-RS). ...
International audienceThis paper provides a service-oriented such solution which explore the ontolog...
Not AvailableThis paper proposes the design of a recommender system that uses knowledge stored in th...
25th International Symposium on Computer and Information Sciences, ISCIS 2010 -- 22 September 2010 t...
In recent years, e-learning recommender systems has attracted great attention as a solution towards ...
International audienceThe recent development of theWorldWideWeb, information, and communications tec...
Recommender systems have achieved success in a variety of domains, as a means to help users in infor...
International audienceThe use of personalized recommender systems to assist users in the selection o...
In our work, we have presented two widely used recommendation systems. We have presented a context-a...
Case-based reasoning (CBR), as one of the problem solving paradigms in the field of Artificial Intel...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
In this paper, we define reusable inference steps for content-based recommender systems based on sem...
International audienceThe constant growth of the Internet has made recommender systems very useful t...