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User integrated similarity based collaborative filtering

机译:基于用户集成相似度的协作过滤

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Traditional similarity calculation method in collaborative filtering is inaccuracy due to the extreme sparsity of user rating data. To address this problem, we propose a collaborative filtering recommendation algorithm based on user integrated similarity. The algorithm modifies the similarity calculation formula by introducing the common factor. Then it introduces the item category interestingness eigenvector by category of items and distribution of user ratings to construct the user’s item category interestingness similarity. Finally, it combines the user rating similarity to construct the integrated similarity, and generates recommendations. The experimental results show that this algorithm can effectively relieve the inaccuracy of traditional similarity calculation method in the case of extreme sparsity of user rating data, and improve the quality of the recommendation of recommender systems.
机译:由于用户评分数据的极度稀疏性,协作过滤中的传统相似度计算方法不准确。为了解决这个问题,我们提出了一种基于用户综合相似度的协同过滤推荐算法。该算法通过引入公因子来修改相似度计算公式。然后,根据商品类别和用户评分的分布介绍商品类别兴趣度特征向量,以构建用户的商品类别兴趣度相似度。最后,它结合了用户评分相似度以构建综合相似度,并生成推荐。实验结果表明,该算法可以有效缓解用户评分数据稀疏情况下传统相似度计算方法的不准确性,提高推荐系统的推荐质量。

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