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Index Terms
- Recommender systems in e-commerce
Recommendations
E-Commerce Recommendation Applications
i>Recommender systems are being used by an ever-increasing number of E-commerce sites to help consumers find products to purchase. What started as a novelty has turned into a serious business tool. Recommender systems use product knowledgeeither hand-...
A Graph Based Approach to Extract a Neighborhood Customer Community for Collaborative Filtering
DNIS '02: Proceedings of the Second International Workshop on Databases in Networked Information SystemsIn E-commerce sites, recommendation systems are used to recommend products to their customers. Collaborative filtering (CF) is widely employed approach to recommend products. In the literature, researchers are making efforts to improve the scalability ...
Improving the performance of recommender system by exploiting the categories of products
DNIS'11: Proceedings of the 7th international conference on Databases in Networked Information SystemsIn the literature, collaborative filtering (CF) approach and its variations have been proposed for building recommender systems. In CF, recommendations for a given user are computed based on the ratings of <em>k</em> nearest neighbours. The nearest ...
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