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Research of Personalized Recommendation Algorithm Based on Trust and User's Interest

机译:基于信任和用户兴趣的个性化推荐算法研究

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Most traditional recommendation algorithms only consider the binary relationship between users and projects, these can basically be converted into score prediction problems. But most of these algorithms ignore the users's interests, potential work factors or the other social factors of the recommending products. In this paper, based on the existing trustworthyness model and similarity measure, we puts forward the concept of trust similarity and design a joint interest-content recommendation framework to suggest users which videos to watch in the online video site. In this framework, we first analyze the user's viewing history records, tags and establish the user's interest characteristic vector. Then, based on the updated vector, users should be clustered by sparse subspace clust algorithm, which can improve the efficiency of the algorithm. We certainly improve the calculation of similarity to help users find better neighbors. Finally we conduct experiments using real traces from Tencent Weibo and Youku to verify our method and evaluate its performance. The results demonstrate the effectiveness of our approach and show that our approach can substantially improve the recommendation accuracy.
机译:大多数传统的推荐算法仅考虑用户和项目之间的二进制关系,这些基本上可以转化为分数预测问题。但是这些算法大多数都忽略了用户的兴趣,潜在的工作因素或推荐产品的其他社会因素。本文在现有信任度模型和相似性度量的基础上,提出了信任相似性的概念,设计了一个联合兴趣内容推荐框架,向用户推荐在线视频网站上要观看哪些视频。在此框架中,我们首先分析用户的观看历史记录,标签并建立用户的兴趣特征向量。然后,基于更新的向量,应使用稀疏子空间聚类算法对用户进行聚类,从而可以提高算法的效率。我们当然会改善相似度的计算,以帮助用户找到更好的邻居。最后,我们使用来自腾讯微博和优酷的真实痕迹进行实验,以验证我们的方法并评估其性能。结果证明了我们方法的有效性,并表明我们的方法可以大大提高建议的准确性。

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