基于协同评级序列相似性的协同过滤推荐算法

Xiaoyu Liu, Shuqing Li
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引用次数: 2

摘要

为了提高推荐系统的准确率,我们研究了用户间共同评分条目的数量和相似用户间的序列关联对用户评分的影响。在计算用户相似度时,不仅要考虑用户评分的影响,还要考虑由共同评分项组成的用户关联序列之间的相似度。并在此基础上,提出了更精确的用户相似度度量方法,得到了更准确的用户评分预测方法。实验结果表明,与其他算法相比,本文提出的相似度计算方法结合共评分序列能够更准确地表征用户相似度,用户评分预测均方误差较小,推荐效果得到有效提高。而该算法基于大量的实验基础,没有将深度学习纳入范畴,因此融合系数的选择可能不是最优的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Filtering Recommendation Algorithm Based on Similarity of Co-Rating Sequence
In order to improve the accuracy of the recommendation system, we study the influence of the number of co-rating items between users and the sequence associations between similar users on user ratings. When calculating the user similarity, we can not only consider the influence of user ratings, but also consider the similarity between user association sequences consisting of the number of co-rating items. And on this basis, we propose a more accurate user similarity measurement method, and get a more accurate user rating prediction method.The experimental results show that the proposed similarity calculation method combined with the co-rating sequence can more accurately characterize the user similarity, the user ratings prediction mean square error is smaller and the recommended effect is effectively improved compared with other algorithms. While the algorithm is based on a large number of experimental foundations, does not include deep learning into the category, so the choice of fusion coefficient may not be optimal.
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