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Recommender system based on user information

机译:基于用户信息的推荐系统

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摘要

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.
机译:作为最成功的推荐器系统之一,协作过滤(CF)仍然存在问题:稀疏性会降低推荐的准确性和可伸缩性,从而难以顺利扩展数据。特别是,稀疏性可能会降低推荐的准确性,从而在可靠性方面引起严重的问题。在本文中,为了减少稀疏性并提高推荐的准确性,我们提出了一种利用用户信息权重将基于项目的CF与基于用户的CF结合起来的方法。所提出的方法基于用户信息的权重来计算用户相似度,从而一旦将未评级的项目预先填充在基于项目的CF中的用户项目评级矩阵中,就可以做出预测。实验结果表明,与传统的协同过滤相比,该方法可以提高评级数据的极端稀疏性,并提供更好的推荐结果。

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