International audienceDecentralized recommenders have been proposed to deliver privacy-preserving, personalized and highly scalable on-line recommendation services. Current implementations tend, however, to rely on hard-wired, mechanisms that cannot adapt. Deciding beforehand which hard-wired mechanism to use can be difficult, as the optimal choice might depend on conditions that are unknown at design time. In this pa-per, propose a framework to develop dynamically adaptive decentralized recommendation systems. Our proposal sup-ports a decentralized form of adaptation, in which individual nodes can independently select, and update their own rec-ommendation algorithm, while still collectively contributing to the overall system's services
Nowadays information available on the World Wide Web has reached unprecedented growth and it makes i...
In this paper we consider Recommender System (RS) modeling in terms of Adaptive Hypermedia Systems (...
This paper addresses the recommendation of online services provided by public administrations taking...
International audienceDecentralized recommenders have been proposed to deliver privacy-preserving, p...
Decentralized recommenders have been proposed to deliver privacy-preserving, personalized and highly...
International audienceDecentralised recommenders have been proposed to deliver privacy-preserving, p...
GDD_HCERES2020This report presents two contributions that illustrate the potential of emerging-local...
This thesis consists of three papers on recommender systems. The first paper addresses the problem...
We design and study recommendation algorithms for a fully decentralized scenario in which each item/...
This thesis consists of three papers on recommender systems. The first paper addresses the problem o...
Recommendation systems are widely used in Internet applications. In current recommendation systems, ...
The advent of the Semantic Web necessitates paradigm shifts away from centralized client/server arch...
The advent of the Semantic Web necessitates paradigm shifts away from centralized client/server arch...
Search engines, portals and topic-centered web sites are all attempts to create more or less persona...
Self-adaptive systems typically rely on a closed control loop which detects when the current behavio...
Nowadays information available on the World Wide Web has reached unprecedented growth and it makes i...
In this paper we consider Recommender System (RS) modeling in terms of Adaptive Hypermedia Systems (...
This paper addresses the recommendation of online services provided by public administrations taking...
International audienceDecentralized recommenders have been proposed to deliver privacy-preserving, p...
Decentralized recommenders have been proposed to deliver privacy-preserving, personalized and highly...
International audienceDecentralised recommenders have been proposed to deliver privacy-preserving, p...
GDD_HCERES2020This report presents two contributions that illustrate the potential of emerging-local...
This thesis consists of three papers on recommender systems. The first paper addresses the problem...
We design and study recommendation algorithms for a fully decentralized scenario in which each item/...
This thesis consists of three papers on recommender systems. The first paper addresses the problem o...
Recommendation systems are widely used in Internet applications. In current recommendation systems, ...
The advent of the Semantic Web necessitates paradigm shifts away from centralized client/server arch...
The advent of the Semantic Web necessitates paradigm shifts away from centralized client/server arch...
Search engines, portals and topic-centered web sites are all attempts to create more or less persona...
Self-adaptive systems typically rely on a closed control loop which detects when the current behavio...
Nowadays information available on the World Wide Web has reached unprecedented growth and it makes i...
In this paper we consider Recommender System (RS) modeling in terms of Adaptive Hypermedia Systems (...
This paper addresses the recommendation of online services provided by public administrations taking...