Mining Latent Structures for Multimedia Recommendation

  title={Mining Latent Structures for Multimedia Recommendation},
  author={Jinghao Zhang and Yanqiao Zhu and Qiang Liu and Shu Wu and Shuhui Wang and Liang Wang},
  journal={Proceedings of the 29th ACM International Conference on Multimedia},
  • Jinghao Zhang, Yanqiao Zhu, +3 authors Liang Wang
  • Published 19 April 2021
  • Computer Science
  • Proceedings of the 29th ACM International Conference on Multimedia
Multimedia content is of predominance in the modern Web era. Investigating how users interact with multimodal items is a continuing concern within the rapid development of recommender systems. The majority of previous work focuses on modeling user-item interactions with multimodal features included as side information. However, this scheme is not well-designed for multimedia recommendation. Specifically, only collaborative item-item relationships are implicitly modeled through high-order item… Expand

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