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Temporal sensitive heterogeneous graph neural network for news recommendation

机译:新闻推荐的时间敏感异构图神经网络

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摘要

News recommendation plays an important role in alleviating information overload and helping users find their interesting news. Most of the existing news recommendation methods make a recommendation based on static data. They ignore the time dynamic characteristics of the interaction between users and news, that is, the order in which users click on news implicitly indicates the user's interest in news. In this paper, we propose a time sensitive heterogeneous graph neural network for news recommendation. The network consists of two subnetworks. One subnet utilizes convolutional neural network and improved LSTM to learn a user's stay period on the page and click sequence characteristics as the temporal dimension feature. The other subnet constructs an attention-based heterogeneous graph to model the user-news-topic associations, and apply graph neural network to learn the structural features of the heterogeneous graph as spatial dimensional features. Experiments conducted show that our model outperforms the state-of-the-art models in accuracy and has better interpretability.
机译:新闻推荐在缓解信息过载和帮助用户找到他们有趣的消息方面发挥着重要作用。大多数现有的新闻推荐方法是根据静态数据的推荐。它们忽略了用户和新闻之间交互的时间动态特征,即用户点击新闻的顺序隐含地表示用户对新闻的兴趣。在本文中,我们提出了一个时间敏感的异构图形神经网络,用于新闻推荐。网络由两个子网组成。一个子网利用卷积神经网络,并改进了LSTM,以在页面上学习用户的逗留期,并单击“序列特征”作为时间维度特征。另一个子网构造一种基于注意的异构图,以模拟用户新闻主题关联,并应用图形神经网络,以将异构图的结构特征作为空间尺寸特征。进行实验表明,我们的模型精确地优于最先进的模型,并具有更好的解释性。

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