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A Hybrid Recommendation Algorithm Based on Heuristic Similarity and Trust Measure

机译:基于启发式相似度和信任度的混合推荐算法

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摘要

In this paper, we propose a hybrid collaborative filtering recommendation algorithm based on heuristic similarity and trust measure, in order to alleviate the problem of data sparsity, cold start and trust measure. Firstly, a new similarity measure is implemented by weighted fusion of multiple similarity influence factors obtained from the rating matrix, so that the similarity measure becomes more accurate. Then, a user trust relationship computing model is implemented by constructing the user's trust network based on the trust propagation theory. On this basis, a SIMT collaborative filtering algorithm is designed which integrates trust and similarity instead of the similarity in traditional collaborative filtering algorithm. Further, an improved K nearest neighbor recommendation based on clustering algorithm is implemented for generation of a better recommendation list. Finally, a comparative experiment on FilmTrust dataset shows that the proposed algorithm has improved the quality and accuracy of recommendation, thus overcome the problem of data sparsity, cold start and trust measure to a certain extent.
机译:本文提出了一种基于启发式相似度和信任度的混合协同过滤推荐算法,以缓解数据稀疏,冷启动和信任度的问题。首先,通过对从评分矩阵中获得的多个相似度影响因子进行加权融合,实现了一种新的相似度度量,使得相似度度量变得更加准确。然后,通过建立基于信任传播理论的用户信任网络,实现用户信任关系计算模型。在此基础上,设计了一种SIMT协同过滤算法,该算法集成了信任和相似度,而不是传统协同过滤算法中的相似度。此外,实现了基于聚类算法的改进的K最近邻居推荐,用于生成更好的推荐列表。最后,通过对FilmTrust数据集的对比实验表明,该算法提高了推荐的质量和准确性,从而在一定程度上克服了数据稀疏,冷启动和信任措施的问题。

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