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Diversified recommendation algorithm for hybrid label based on matrix factorization

机译:基于矩阵分解的混合标签多样化推荐算法

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As to the problem of Cold-Start and Simplification, a new recommendation algorithm named Diversified Recommendation Algorithm for Hybrid Label based on Matrix Factorization (DRA-HLMF) is proposed in this paper. Firstly, the existing preference of users and relevance of items are excavated in the social networks in order to increase the diversity of label recommendations horizontally and vertically(also users and items); Secondly, the trust value by combining the initial label value with the label popularity can ensure the accuracy of label recommendation. Finally, the recommendation is dynamically updated by the time-weight value. Then the recommendation results are obtained by matrix factorization algorithm. Experiments on real data show that the proposed method can improve the coverage and diversity of label recommendation on the basis of guaranteeing accuracy in comparison with classical algorithms.
机译:针对冷启动和简化的问题,提出了一种新的推荐算法,即基于矩阵分解的混合标签多样化推荐算法(DRA-HLMF)。首先,在社交网络中挖掘用户的现有偏好和项目的相关性,以增加水平和垂直方向上标签建议(以及用户和项目)的多样性;其次,将初始标签值与标签流行度相结合的信任值可以保证标签推荐的准确性。最后,该建议将通过时间权重值进行动态更新。然后通过矩阵分解算法获得推荐结果。实际数据实验表明,与经典算法相比,该方法在保证准确性的基础上,可以提高标签推荐的覆盖范围和多样性。

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