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AOIS
2004

Market-Based Recommender Systems: Learning Users' Interests by Quality Classification

14 years 27 days ago
Market-Based Recommender Systems: Learning Users' Interests by Quality Classification
Recommender systems are widely used to cope with the problem of information overload and, consequently, many recommendation methods have been developed. However, no one technique is best for all users in all situations. To combat this, we have previously developed a market-based recommender system that allows multiple agents (each representing a different recommendation method or system) to compete with one another to present their best recommendations to the user. In our system, the marketplace encourages good recommendations by rewarding the corresponding agents according to the users' ratings of their suggestions. Moreover, we have shown this incentivises the agents to bid in a manner that ensures only the best recommendations are presented. To do this effectively, however, each agent needs to classify its recommendations into different internal quality levels, learn the users' interests and adapt its bidding behaviour for the various internal quality levels accordingly. T...
Yan Zheng Wei, Luc Moreau, Nicholas R. Jennings
Added 30 Oct 2010
Updated 30 Oct 2010
Type Conference
Year 2004
Where AOIS
Authors Yan Zheng Wei, Luc Moreau, Nicholas R. Jennings
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