Improving Recommendation Novelty Based on Topic Taxonomy

Author: Yuefeng Li, Richi Nayak, Soloman Weng, Yue Xu
Publisher: Institute of Electrical and Electronics Engineers (IEEE)

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Clustering has been a widely applied approach to improve the computation efficiency of collaborative filtering based recommendation systems. Many techniques have been suggested to discover the item-to-item, user-to- user, and item-to-user associations within user clusters. However, there are few systems utilize the cluster based topic-to-topic associations to make recommendations. This paper suggests a taxonomy-based recommender system that utilizes cluster based topic-to-topic associations to improve its recommendation quality and novelty

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