Meta-Learning based Heterogeneous Graph Attention Network for Top-N Review Recommendation

Shuwei Wang, Wei Liu, Jian Yin
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Abstract

User-generated content (UGC) has become more and more popular on the web and the published review is an essential type of UGC. Nevertheless, the explosion of reviews brings a problem of severe information overload. Therefore, most web services supply review recommendations for users. Traditionally, reviews of an item could be exhibited in chronological or popularity order without personalization. However, some researchers are aware of the significant role of the personalized review recommendation, which focuses on discovering users’ personalized preferences so that recommended reviews could match users’ preferences better. Unfortunately, it is hard to obtain users’ feedback on reviews due to the privacy protection and trade secrets. Furthermore, the difficulty in capturing varying patterns of users’ preferences and the sparsity of interactions between users and reviews are also challenging. To address these problems, we first formally define the top-N review recommendation problem and construct two categories of datasets based on a public dataset. Secondly, we propose a meta-learning based heterogeneous graph attention network incorporating multiple relationships among the users, items and reviews to model personalized users’ preferences and cope with the sparse situation. Moreover, to accelerate the message propagation computation, a method of the substructure-oriented local graph construction is proposed and is fused into the meta-learning framework based on a pair-wise ranking. For the top-N review recommendation, experiments are conducted on the two categories of a real-world dataset. Compared with the state-of-the-arts, the results validate the effectiveness of our model for review recommendation.
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基于元学习的异构图注意网络Top-N评论推荐
用户生成内容(User-generated content, UGC)在网络上越来越流行,而发表评论是UGC的一种重要类型。然而,评论的爆炸式增长带来了严重的信息过载问题。因此,大多数web服务为用户提供审查建议。传统上,对一个项目的评论可以按时间顺序或流行程度顺序展示,而不需要个性化。然而,一些研究人员已经意识到个性化评论推荐的重要作用,它的重点是发现用户的个性化偏好,从而使推荐的评论更好地匹配用户的偏好。不幸的是,由于隐私保护和商业秘密的原因,很难获得用户对评论的反馈。此外,难以捕捉用户偏好的不同模式以及用户和评论之间交互的稀疏性也具有挑战性。为了解决这些问题,我们首先正式定义了top-N评论推荐问题,并基于公共数据集构建了两类数据集。其次,我们提出了一种基于元学习的异构图关注网络,将用户、条目和评论之间的多重关系结合起来,模拟个性化用户的偏好并应对稀疏情况。此外,为了加速消息传播计算,提出了一种面向子结构的局部图构建方法,并将其融合到基于成对排序的元学习框架中。对于top-N评论推荐,在真实数据集的两个类别上进行实验。与最先进的方法进行比较,结果验证了该模型在评审推荐中的有效性。
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