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A Personalized Recommendation Algorithm Based on the Fusion of Trust Relation and Time Series

机译:基于信任关系和时间序列融合的个性化推荐算法

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摘要

In order to further improve the accuracy of personalized recommendation algorithm in social network, on the basis of summarizing the traditional recommendation algorithm, this paper introduces the social relationship between users, the trust propagation mechanism and time sequence information and user-item score matrix information are fused to the probability matrix decomposition model, a new personalized recommendation model TTSMF is established, the model learns the potential features of the user and the item, and consider the time factor, and handle trust relationship between users. Even if the user does not score on any item, it can also learn the user's feature vector by trusting relationship. Compared with existing algorithms, TTSMF algorithm can better solve the cold start problem and improve the accuracy of the algorithm. By analyzing the time complexity of the algorithm, the TTSMF algorithm can be easily extended to the application scenarios with large data sets.
机译:为了进一步提高社交网络中个性化推荐算法的准确性,在总结传统推荐算法的基础上,介绍了用户之间的社交关系,信任传播机制以及时间序列信息和用户项得分矩阵信息。结合概率矩阵分解模型,建立了新的个性化推荐模型TTSMF,该模型学习了用户和物品的潜在特征,并考虑了时间因素,处理了用户之间的信任关系。即使用户没有在任何项目上评分,它也可以通过信任关系来学习用户的特征向量。与现有算法相比,TTSMF算法可以更好地解决冷启动问题,提高了算法的精度。通过分析算法的时间复杂度,可以将TTSMF算法轻松扩展到具有大数据集的应用场景。

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