Recommender systems currently used in many applications, including tourism, tend to simply be reactive to user request. The recommender system proposed in this paper uses multi-agents and multi-dimensional contextual information to achieve proactive behavior. User profile and behavior get implicitly incorporated and subsequently updated in the system. The recommender system has been developed and applied to the tourism domain. It was tested and evaluated by relatively large set of real users The evaluation conducted shows that most of the users are satisfied with the functionality of the system and its ability to produce the recommendation adaptively and proactively taking into considerations different factors
International audienceWe first introduce ambient recommender systems, which arose from the analysis ...
Over the past few years, recommendation systems have gained immense popularity and are being applied...
[EN] This paper presents a recommender system for tourism based on the tastes of the users, their de...
Today\u2019s design of e-services for tourists means dealing with a big quantity of information and ...
This paper proposes the development of an Agent framework for tourism recommender system. The recomm...
Abstract — This paper describes a trust model for multia-gent recommender systems. A user’s request ...
Recommendation systems are becoming more and more popular and are introduced to new domains all of t...
Abstract: The combined use of cognitive and collaborative filtering has been advocated as a means to...
This work presents a recommender system that helps travel agents in discovering options for custom-e...
A tourist has time and budget limitations; hence, he needs to select points of interest (POIs) optim...
Recommender systems, also known as recommender engines, have become an important research area and a...
Consumer reviews, opinions and shared experiences in the use of a product form a powerful source of ...
We have designed, implemented, deployed and evaluated a large-scale agent-oriented information syste...
In recent 20 years, using multi-agent models has been developed in many research fields, especially ...
In this paper we present CoRSAR, a mobile recommender system for the tourism domain in Augmented Rea...
International audienceWe first introduce ambient recommender systems, which arose from the analysis ...
Over the past few years, recommendation systems have gained immense popularity and are being applied...
[EN] This paper presents a recommender system for tourism based on the tastes of the users, their de...
Today\u2019s design of e-services for tourists means dealing with a big quantity of information and ...
This paper proposes the development of an Agent framework for tourism recommender system. The recomm...
Abstract — This paper describes a trust model for multia-gent recommender systems. A user’s request ...
Recommendation systems are becoming more and more popular and are introduced to new domains all of t...
Abstract: The combined use of cognitive and collaborative filtering has been advocated as a means to...
This work presents a recommender system that helps travel agents in discovering options for custom-e...
A tourist has time and budget limitations; hence, he needs to select points of interest (POIs) optim...
Recommender systems, also known as recommender engines, have become an important research area and a...
Consumer reviews, opinions and shared experiences in the use of a product form a powerful source of ...
We have designed, implemented, deployed and evaluated a large-scale agent-oriented information syste...
In recent 20 years, using multi-agent models has been developed in many research fields, especially ...
In this paper we present CoRSAR, a mobile recommender system for the tourism domain in Augmented Rea...
International audienceWe first introduce ambient recommender systems, which arose from the analysis ...
Over the past few years, recommendation systems have gained immense popularity and are being applied...
[EN] This paper presents a recommender system for tourism based on the tastes of the users, their de...