The advent of the Semantic Web necessitates paradigm shifts away from centralized client/server architectures towards decentralization and peer-to-peer computation, making the existence of central authorities superfluous and even impossible. At the same time, recommender systems are gaining considerable impact in e-commerce, providing people with recommendations that are personalized and tailored to their very needs. These recommender systems have traditionally been deployed with stark centralized scenarios in mind, operating in closed communities detached from their host network's outer perimeter. We aim at marrying these two worlds, i.e., decentralized peer-to-peer computing and recommender systems, in one agent-based framework. Our ...
Gossip-based peer-to-peer protocols proved to be very efficient for supporting dynamic and complex i...
Decentralized recommenders have been proposed to deliver privacy-preserving, personalized and highly...
Abstract. As the amount of information available to users continues to grow, filtering wanted items ...
The advent of the Semantic Web necessitates paradigm shifts away from centralized client/server arch...
For the Semantic Web vision to come true, the power of distributed applications needs to be leverage...
This thesis consists of three papers on recommender systems. The first paper addresses the problem...
This thesis consists of three papers on recommender systems. The first paper addresses the problem o...
Abstract. Recommender systems, notably collaborative and hybrid information filtering approaches, vi...
Network analysis has proved to be very useful in many social and natural sciences, and in particular...
GDD_HCERES2020This report presents two contributions that illustrate the potential of emerging-local...
Abstract. Small World patterns have been found in many social and natural networks, and even in Peer...
Abstract. Recommender systems, notably collaborative and hybrid information filtering approaches, vi...
Recommender systems aggregate individual user ratings into predictions of products or services that ...
Recommender systems aggregate individual user ratings into predictions of products or services that ...
Small World patterns have been found in many social and natural networks, and even in Peer-to-Peer t...
Gossip-based peer-to-peer protocols proved to be very efficient for supporting dynamic and complex i...
Decentralized recommenders have been proposed to deliver privacy-preserving, personalized and highly...
Abstract. As the amount of information available to users continues to grow, filtering wanted items ...
The advent of the Semantic Web necessitates paradigm shifts away from centralized client/server arch...
For the Semantic Web vision to come true, the power of distributed applications needs to be leverage...
This thesis consists of three papers on recommender systems. The first paper addresses the problem...
This thesis consists of three papers on recommender systems. The first paper addresses the problem o...
Abstract. Recommender systems, notably collaborative and hybrid information filtering approaches, vi...
Network analysis has proved to be very useful in many social and natural sciences, and in particular...
GDD_HCERES2020This report presents two contributions that illustrate the potential of emerging-local...
Abstract. Small World patterns have been found in many social and natural networks, and even in Peer...
Abstract. Recommender systems, notably collaborative and hybrid information filtering approaches, vi...
Recommender systems aggregate individual user ratings into predictions of products or services that ...
Recommender systems aggregate individual user ratings into predictions of products or services that ...
Small World patterns have been found in many social and natural networks, and even in Peer-to-Peer t...
Gossip-based peer-to-peer protocols proved to be very efficient for supporting dynamic and complex i...
Decentralized recommenders have been proposed to deliver privacy-preserving, personalized and highly...
Abstract. As the amount of information available to users continues to grow, filtering wanted items ...