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Interaction Graph Neural Network for News Recommendation

机译:互动图神经网络的新闻推荐

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Personalized news recommendation has become a highly challenging problem in recent years. Traditional ID-based methods such as collaborative filtering are not suitable for news recommendation due to the extremely rapid update of candidate news. Various content-based methods have been proposed for news recommendation and achieved the state-of-the-art performance. Recently, knowledge-aware news recommendation further improves the performance through discover latent knowledge level connections among the news. However, we argue that the above content-based methods do not fully utilize the collaborative information latent in user-item interactions into user and news representation learning process. In this paper, we propose a new news recommendation model, Interaction Graph Neural Network (IGNN), which integrates a user-item interactions graph and a knowledge graph into the news recommendation model. Specifically, IGNN obtains the representation of users and items with two graphs. One is the knowledge graph, and another is the user-item interaction graph. It learns the content-based feature from knowledge-level and semantic-level with convolutional neural networks and fuses the high-order collaborative signals extracted from the user-item interaction graph into user and news representation learning process with a graph neural network. Extensive experiments are conducted on the two real-world news data sets, and experimental results show that IGNN significantly outperforms the state-of-the-art approaches for news recommendation.
机译:近年来,个性化新闻推荐已成为极具挑战性的问题。由于候选新闻的更新速度非常快,因此传统的基于ID的方法(例如协作过滤)不适用于新闻推荐。已经提出了各种基于内容的方法来推荐新闻,并实现了最先进的性能。最近,了解知识的新闻推荐通过发现新闻之间潜在的知识水平联系来进一步提高性能。但是,我们认为上述基于内容的方法没有充分利用潜在的用户-项目交互中潜在的协作信息进入用户和新闻表示学习过程。在本文中,我们提出了一种新的新闻推荐模型,即交互图神经网络(IGNN),它将用户-项目交互图和知识图集成到新闻推荐模型中。具体来说,IGNN使用两个图形获取用户和项目的表示。一个是知识图,另一个是用户-项目交互图。它使用卷积神经网络从知识级别和语义级别学习基于内容的功能,并通过图神经网络将从用户-项目交互图提取的高阶协作信号融合到用户和新闻表示学习过程中。在两个真实世界的新闻数据集上进行了广泛的实验,实验结果表明,IGNN明显优于最新的新闻推荐方法。

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