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Index Terms
- Item-based collaborative filtering recommendation algorithms
Recommendations
Userrank for item-based collaborative filtering recommendation
With the recent explosive growth of the Web, recommendation systems have been widely accepted by users. Item-based Collaborative Filtering (CF) is one of the most popular approaches for determining recommendations. A common problem of current item-based ...
A Collaborative Filtering Recommendation Algorithm Based on Item Classification
PACCS '09: Proceedings of the 2009 Pacific-Asia Conference on Circuits, Communications and SystemsCollaborative filtering systems represent services of personalized that aim at predicting a user’s interest on some items available in the application systems. With the development of electronic commerce, the number of users and items grows rapidly, ...
A Genre-Based Item-Item Collaborative Filtering: Facing the Cold-Start Problem
ICSCA '19: Proceedings of the 2019 8th International Conference on Software and Computer ApplicationsRecommender System is a technique which is used to recommend an item or product to a user based on the user's preference'. Collaborative filtering is an approach that is vastly used in recommender systems. Item-item-based collaborative filtering is a ...
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