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Bayesian recommender system for social information sharing: Incorporating tag-based personalized interest and social relationships

机译:贝叶斯社交信息共享推荐系统:结合基于标签的个性化兴趣和社交关系

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摘要

Personal information management enables users to manage and classify information via the social tagging. The personal information management platform has recently successfully adopted social networks, enabling users to conveniently share their preferences of information with each other. The emerging social networks generate new concepts for designing modern recommender systems in personal information management and sharing platforms.To design a recommender mechanism for the personal information management and sharing platforms, this work incorporates tag-based personalized interest and social network relationships into a modified Bayesian probability model.The proposed system is demonstrated with experimental datasets obtained from a popular social resource sharing website. The performances of the proposed system are evaluated based on the word2vec word embedding model. Experimental results indicate that incorporating social network information and personalized tag-based preference with the Bayesian model can improve the recommendation quality for social information sharing websites.
机译:个人信息管理使用户可以通过社交标签来管理和分类信息。个人信息管理平台最近成功地采用了社交网络,使用户可以方便地彼此共享信息的偏好。新兴的社交网络为在个人信息管理和共享平台中设计现代推荐系统提供了新概念。为设计用于个人信息管理和共享平台的推荐器机制,这项工作将基于标签的个性化兴趣和社交网络关系纳入了改进的贝叶斯算法中概率模型。通过从一个流行的社会资源共享网站获得的实验数据集对该系统进行了演示。基于word2vec词嵌入模型对所提出系统的性能进行了评估。实验结果表明,将社交网络信息和基于个性化标签的偏好与贝叶斯模型相结合可以提高社交信息共享网站的推荐质量。

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