One of the most successful recommender system, collaborative filtering (CF) still has problems: sparsity deteriorating the accuracy of recommendation and scalability making it difficult to expand data smoothly. In particular, sparsity can reduce the accuracy of recommendation, causing a serious problem in terms of reliability. In this paper, in order to reduce sparsity and raise the accuracy of recommendation, we propose a method that combines an item-based CF with user-based CF using weight of user information. The proposed method computes user similarity on the basis of weight of user information and thereby makes a prediction, once non-rated items pre-filled in the user-item rating matrix in the item-based CF. The result of the experiment shows that the proposed method can improve the extreme sparsity of rating data, and provide better recommendation results than traditional collaborative filtering.
Silvana AciarGabriela AciarCésar A. CollazosCarina Soledad González González
Shahriar BadshaXun YiIbrahim KhalilElisa Bertino
Heng‐Ru ZhangFan MinXu HeYuanyuan Xu