Attention-Based Graph Neural Network for News Recommendation

Zhenyan Ji, Mengdan Wu, Jirui Liu, J. E. Armendáriz-Iñigo
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引用次数: 2

Abstract

News recommendation aims to alleviate the big explosion of news information and helps users find their interesting news. Existing news recommendation models model users' historical click news as users' interests. Although they have achieved acceptable recommendation accuracy, they suffer from severe data sparse problems because of the limited news clicked by users. Further, the user's historical click sequence information has different effects on the user's interest, and simply combining them can not reflect this difference. Therefore, we propose an attention-based graph neural network news recommendation model. In our model, muti-channel convolutional neural network is used to generate news representations, and recurrent neural network is used to extract the news sequence information that users clicked on. Users, news, and topics are modeled as three types of nodes in a heterogeneous graph, and their relationships are modeled as edges. Graph neural network is used to effectively extract the structural information from heterogeneous graph, and helps to solve the problem of sparse data. Taking into account the different effects of different information on recommendation results, we use the attention mechanism to fuse this information distinctively. Extensive experiments conducted on the real online news datasets show that our model is superior to advanced deep learning-based recommendation methods.
基于注意力的新闻推荐图神经网络
新闻推荐旨在缓解新闻信息的大爆炸,帮助用户找到自己感兴趣的新闻。现有的新闻推荐模型将用户的历史点击新闻作为用户的兴趣。虽然它们已经达到了可以接受的推荐准确率,但是由于用户点击的新闻有限,存在严重的数据稀疏问题。此外,用户的历史点击序列信息对用户的兴趣有不同的影响,简单地将它们结合起来并不能反映这种差异。因此,我们提出了一种基于注意力的图神经网络新闻推荐模型。在我们的模型中,使用多通道卷积神经网络生成新闻表示,使用递归神经网络提取用户点击的新闻序列信息。用户、新闻和主题被建模为异构图中的三种类型的节点,它们的关系被建模为边。利用图神经网络有效地从异构图中提取结构信息,有助于解决数据稀疏问题。考虑到不同信息对推荐结果的不同影响,我们使用注意机制对这些信息进行独特的融合。在真实的在线新闻数据集上进行的大量实验表明,我们的模型优于基于深度学习的高级推荐方法。
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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