Multi-Aggregator Time-Warping Heterogeneous Graph Neural Network for Personalized Micro-Video Recommendation

Jinkun Han, Wei Li, Zhipeng Cai, Yingshu Li
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引用次数: 1

Abstract

Micro-video recommendation is attracting global attention and becoming a popular daily service for people of all ages. Recently, Graph Neural Networks-based micro-video recommendation has displayed performance improvement for many kinds of recommendation tasks. However, the existing works fail to fully consider the characteristics of micro-videos, such as the high timeliness of news nature micro-video recommendation and sequential interactions of frequently changed interests. In this paper, a novel Multi-aggregator Time-warping Heterogeneous Graph Neural Network (MTHGNN) is proposed for personalized news nature micro-video recommendation based on sequential sessions, where characteristics of micro-videos are comprehensively studied, users' preference is mined via multi-aggregator, the temporal and dynamic changes of users' preference are captured, and timeliness is considered. Through the comparison with the state-of-the-arts, the experimental results validate the superiority of our MTHGNN model.
基于多聚合器时间翘曲异构图神经网络的个性化微视频推荐
微视频推荐正受到全球的关注,成为老少咸宜的日常服务。近年来,基于图神经网络的微视频推荐在多种推荐任务上表现出了性能上的提升。然而,现有的作品并没有充分考虑到微视频的特点,如新闻性质的微视频推荐的高时效性和兴趣频繁变化的顺序交互等。本文提出了一种基于序列会话的个性化新闻性质微视频推荐的多聚合器时间扭曲异构图神经网络(MTHGNN),该网络综合研究了微视频的特征,通过多聚合器挖掘用户偏好,捕捉用户偏好的时间和动态变化,并考虑时效性。通过与最先进技术的比较,实验结果验证了我们的MTHGNN模型的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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