Collaborative Filtering with Entropy-Driven User Similarity in Recommender Systems

Hindawi Limited - Tập 30 Số 8 - Trang 854-870 - 2015
Wei Wang1, Guangquan Zhang1, Jie Lü1
1Decision System and e-Service Intelligence Lab; Centre for Quantum Computation and Intelligence Systems; School of Software; Faculty of Engineering and Information Technology; University of Technology Sydney; Broadway NSW Australia

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