We explore a novel ontological approach to user profiling within recommender systems, working on the problem of recommending on-line academic research papers. Our two experimental systems, Quickstep and Foxtrot, create user profiles from unobtrusively monitored behaviour and relevance feedback, representing the profiles in terms of a research paper topic ontology. A novel profile visualization approach is taken to acquire profile feedback. Research papers are classified using ontological classes and collaborative recommendation algorithms used to recommend papers seen by similar people on their current topics of interest. Two small-scale experiments, with 24 subjects over 3 months, and a large-scale experiment, with 260 subjects over an aca...
A recommender system captures the user preferences and behaviour to provide a relevant recommendatio...
The electronic marketplace offers great potential for the recommenda-tion of supplies. In the so cal...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...
We explore a novel ontological approach to user profiling within recommender systems, working on the...
We explore a novel ontological approach to user profiling within recommender systems, working on the...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
The Foxtrot recommender system recommends on-line research papers from a dynamic database. An ontolo...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
Recommender systems learn about user preferences over time, automatically finding things of similar ...
Collaborative recommendation is effective at representing a user’s overall interests and tastes, and...
In recent years, a number of research works have been carried out to improve the information retriev...
Abstract. To make accurate recommendations, recommendation systems currently require more data about...
A recommender system captures the user preferences and behaviour to provide a relevant recommendatio...
The electronic marketplace offers great potential for the recommenda-tion of supplies. In the so cal...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...
We explore a novel ontological approach to user profiling within recommender systems, working on the...
We explore a novel ontological approach to user profiling within recommender systems, working on the...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
The Foxtrot recommender system recommends on-line research papers from a dynamic database. An ontolo...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
Recommender systems learn about user preferences over time, automatically finding things of similar ...
Collaborative recommendation is effective at representing a user’s overall interests and tastes, and...
In recent years, a number of research works have been carried out to improve the information retriev...
Abstract. To make accurate recommendations, recommendation systems currently require more data about...
A recommender system captures the user preferences and behaviour to provide a relevant recommendatio...
The electronic marketplace offers great potential for the recommenda-tion of supplies. In the so cal...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...