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Mutual Attention Graph Neural Network Based on Joint Representation of Nodes and Reviews for Recommendation

机译:基于关节代表节点的联合代表和建议的互联网神经网络

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Recently, recommendation system have achieved good results by applying graph neural network to user-item inter-action graph. However, current graph neural network mainly deals with structured data and cannot deal with unstructured re-view text well. Item reviews are a unique way for users to choose to purchase the item. Therefore, combining a user-item interaction graph with related review text will obtain better recommendation performance. At the same time, most of the recommendation methods that have been proposed simply concatenate the representations from different modalities to make predictions. This can-not take advantage of the information from different modalities. To solve these problems, we propose a Mutual Attention graph neural Network (MAN) for personalized recommendation. MAN first extracts user/item node representation on user-item interaction graph through node feature extraction module, and extracts user/item review text representation through review feature ex-traction module. Then a mutual attention module is used to correlate node representation and review text representation, so as to capture the correlation between the node representation and the review text representation during the training process. Experimental results on three real-world datasets show MAN is better than the state-of-the-art personalized recommendation method.
机译:最近,推荐系统通过将图形神经网络应用于用户项际行为图来实现了良好的结果。但是,当前图形神经网络主要涉及结构化数据,无法处理非结构化重新查看文本。项目审查是用户选择购买该项目的独特方式。因此,将用户项交互图与相关评审文本组合将获得更好的推荐性能。与此同时,已经提出的大多数推荐方法只需将不同方式的表示串联成预测。这可以利用来自不同模式的信息。为了解决这些问题,我们提出了一个相互关注的神经网络(男人)进行个性化推荐。 Man首先通过节点特征提取模块提取用户项交互图上的用户/项目节点表示,并通过Review Feature Ex-Traction模块提取用户/项目查看文本表示。然后,相互关注模块用于关联节点表示和查看文本表示,以捕获节点表示与培训过程中的审查文本表示之间的相关性。三个现实世界数据集的实验结果显示人员比最先进的个性化推荐方法更好。

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