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Mobile Recommendation Method for Fusing Item Features and User Trust Relationship

机译:用于融合项目特征和用户信任关系的移动推荐方法

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User based collaborative filtering recommendation method does not consider the impact of user preferences on the user's similarity in the non-common score items, and the lack of traditional similarity measurement methods in sparse user score data. This paper proposed a hybrid recommendation method combining similar relationship and trust relationship of mobile users, using the EMD distance method of user preference on similar items to compute the preference similarity relation among the users, and fusing mobile user trust and similar user preferences for the target user's non-scoring items to be scored prediction. Experimental results on public data sets show that, compared to the traditional collaborative filtering recommendation algorithm based on users, this method has a lower MAE enor value and higher P@N value, effectively alleviate the data sparsity and improve the performance of the recommendation system.
机译:基于用户的协作过滤推荐方法没有考虑用户偏好对非公共评分项目中用户相似性的影响,并且在稀疏用户评分数据中缺少传统的相似性度量方法。提出了一种结合移动用户相似关系和信任关系的混合推荐方法,利用相似项上用户偏好的EMD距离方法计算用户之间的偏好相似关系,并将移动用户信任度和相似用户偏好融合为目标用户的非得分项目进行得分预测。在公共数据集上的实验结果表明,与传统的基于用户的协同过滤推荐算法相比,该方法具有较低的MAE enor值和较高的P @ N值,有效减轻了数据稀疏性,提高了推荐系统的性能。

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