Concept-Aware Denoising Graph Neural Network for Micro-Video Recommendation

@article{Liu2021ConceptAwareDG,
  title={Concept-Aware Denoising Graph Neural Network for Micro-Video Recommendation},
  author={Yiyu Liu and Qian Liu and Yu Tian and Changping Wang and Yanan Niu and Yang Song and Chenliang Li},
  journal={Proceedings of the 30th ACM International Conference on Information \& Knowledge Management},
  year={2021}
}
  • Yiyu Liu, Qian Liu, Chenliang Li
  • Published 28 September 2021
  • Computer Science
  • Proceedings of the 30th ACM International Conference on Information & Knowledge Management
Recently, micro-video sharing platforms such as Kuaishou and Tiktok have become a major source of information for people's lives. Thanks to the large traffic volume, short video lifespan and streaming fashion of these services, it has become more and more pressing to improve the existing recommender systems to accommodate these challenges in a cost-effective way. In this paper, we propose a novel concept-aware denoising graph neural network (named Conde) for micro-video recommendation. Conde… 

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