A Recommendation System for the Semantic Web.

DISTRIBUTED COMPUTING AND ARTIFICIAL INTELLIGENCE(2010)

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摘要
Recommendation systems can take advantage of semantic reasoning-capabilities to overcome common limitations of current systems and improve the recommendations' quality. In this paper, we present a personalized-recommendation system, a system that makes use of representations of items and user-profiles based on ontologies in order to provide semantic applications with personalized services. The recommender uses domain ontologies to enhance the personalization: on the one hand, user's interests are modeled in a more effective and accurate way by applying a domain-based inference method; on the other hand, the matching algorithm used by our content-based filtering approach, which provides a measure of the affinity between an item and a user, is enhanced by applying a semantic similarity method. The experimental evaluation on the Netflix movie-dataset demonstrates that the additional knowledge obtained by the semantics-based methods of the recommender contributes to the improvement of recommendation's quality in terms of accuracy.
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关键词
Recommendation systems,Semantic Web,Ontology-based representation,Semantic reasoning,Content-Based filtering,Services Orientation
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