Multi-modal Graph Attention Network for Video Recommendation

Huizhi Liu, Chen Li, Lihua Tian
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引用次数: 1

Abstract

In view of the problems of cold start and data interaction in recommendation systems, and most current recommendation algorithms ignore the diversity of data types, the combination of multimodal data and knowledge graph is bound to improve the pertinence of video recommendation. In this paper, we propose Multi-modal Knowledge Graph Attention Network (MMKGV) model, and all the entity nodes of the knowledge graph are innovatively introduced into multimodal information. The high-order recursive node information dissemination and information aggregation are carried out on the multimodal knowledge graph through the graph attention network. In the model, the triplet function of the knowledge graph is used to construct the triplet inference relationship, and the vector representation generated by the final aggregation is used for recommendation. Through extensive experiments on two public datasets TikTok and Kwai, the results show that the MMKGV can effectively improve the effect of video recommendation compared with other comparison algorithms.
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视频推荐的多模态图关注网络
针对推荐系统中存在的冷启动和数据交互问题,以及目前大多数推荐算法忽视数据类型的多样性,多模态数据与知识图的结合必然会提高视频推荐的针对性。本文提出了多模态知识图注意网络(MMKGV)模型,并将知识图的所有实体节点创新性地引入到多模态信息中。通过图关注网络对多模态知识图进行高阶递归节点信息传播和信息聚合。在该模型中,利用知识图的三元组函数构建三元组推理关系,并利用最终聚合生成的向量表示进行推荐。通过在TikTok和Kwai两个公共数据集上的大量实验,结果表明MMKGV与其他比较算法相比,可以有效地提高视频推荐的效果。
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