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Trust-embedded collaborative deep generative model for social recommendation

  • Xiaoyi Deng
  • , Yenchun Jim Wu*
  • , Fuzhen Zhuang
  • *此作品的通讯作者
  • Huaqiao University
  • National Taiwan Normal University
  • CAS - Institute of Computing Technology

科研成果: 期刊稿件文章同行评审

摘要

Social networks can provide massive amounts of information for communication among users and communities. The trust relationships in social networks can be utilized to reveal user preferences for improving the quality of social recommendation, which aims to mitigate information overload and provide users with the most attractive and relevant items or services. However, the data sparsity and cold-start issue degrade recommendation performance significantly. To address these issues, a novel trust-embedded collaborative deep generative model (TCDG) is proposed for exploiting multisource information (content, rating and trust) to predict ratings. TCDG employs deep generative model to unsupervisedly learn deep latent representations for item content through an inference network in latent space instead of observation space. Meanwhile, TCDG adopts probabilistic matrix factorization to map users into low-dimensional latent feature spaces by trust relationships, which can reflect users’ mutual influence on the formation of users’ opinions more accurately and learn better implicit relationships between items and users from content, rating and trust. In addition, an approach with an annealing parameter to calculate the maximum a posteriori estimates is proposed to learn model parameters. Experiments using four real-world datasets are conducted to evaluate the prediction and top-ranking performance of our model. The results indicate that TDCG has better accuracy and robustness than other methods for making recommendations.

源语言英语
页(从-至)8801-8829
页数29
期刊Journal of Supercomputing
76
11
DOI
出版状态已出版 - 1 11月 2020
已对外发布

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