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Collaborative Filtering Algorithm Research Based on Matrix Factorization and Muti-path Trust Degree Fusion

机译:基于矩阵分解和多径信任度融合的协同过滤算法研究

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摘要

According to the recommendation quality is not high and cold start problem of the recommendation system in the case of sparse data, a collaborative filtering algorithm based on the combination of matrix decomposition technique and social network trust model is proposed. First of all, in the degree of trust computing, expert node method is introduced to determine the existence of multiple paths of trust degree between two non adjacent nodes. At the same time, in order to improve the item rating matrix prediction accuracy of users, under the base of the matrix decomposition optimization, the regularization method is introduced. Then, the multi path trust degree matrix is fused with the user item scores obtained by the matrix regularization to make the score prediction. Finally, the proposed algorithm is validated and compared with the RMSE value on the MovieLens two data sets of different sizes, and the results show that the recommendation accuracy of the proposed algorithm is obviously superior to the traditional algorithm.
机译:针对推荐质量不高以及数据稀疏的情况下推荐系统的冷启动问题,提出了一种基于矩阵分解技术和社交网络信任模型相结合的协同过滤算法。首先,在信任度的计算中,引入了专家节点法来确定两个非相邻节点之间存在多个信任度的路径。同时,为了提高用户对商品评价矩阵的预测精度,在矩阵分解优化的基础上,引入了正则化方法。然后,将多路径信任度矩阵与通过矩阵正则化获得的用户项目分数融合,以进行分数预测。最后,对该算法进行了验证,并与两个不同大小的MovieLens数据集上的RMSE值进行了比较,结果表明,该算法的推荐精度明显优于传统算法。

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