基于会话推荐的分类感知自监督图神经网络

Dongjing Wang, Ruijie Du, Qimeng Yang, Dongjin Yu, Feng Wan, Xiaojun Gong, Guandong Xu, Shuiguang Deng
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引用次数: 0

摘要

基于会话的推荐侧重于根据匿名会话的行为记录预测下一次行为,在实际应用中发挥着重要作用。以往大多数基于会话的推荐方法都是通过对当前会话中用户与项目之间的行为记录建模来捕捉用户的偏好。然而,项目的类别信息并没有得到充分利用,而现有的工作仍然受到数据稀疏性这一严重问题的困扰。在这项工作中,我们提出了一种新颖的基于会话的推荐模型,即类别感知自监督图神经网络(即 CSGNN),它采用预训练层来捕捉物品和类别的特征以及它们之间的相关性。特别是,我们构建了一个由条目节点和类别节点组成的类别感知异构超图,从而增强了当前会话的信息学习能力。然后,我们设计了项目级和类别级自我关注模型,分别代表项目和类别信息,并整合用户的全局和局部偏好,实现基于会话的推荐。最后,我们通过构建类别感知会话图结合自监督学习,进一步提高了 CSGNN 的性能,并缓解了数据稀疏性问题。我们在 Nowplaying、Diginetica 和 Tmall 三个真实数据集上进行了综合实验,结果表明所提出的模型 CSGNN 比基于会话的推荐基线和几种最先进的方法取得了更好的性能。
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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Category-aware self-supervised graph neural network for session-based recommendation

Session-based recommendation which focuses on predicting the next behavior according to anonymous sessions of behavior records plays an important role in real-world applications. Most previous session-based recommendation approaches capture the preferences of users by modeling the behavior records between users and items within current session. However, items’ category information is not fully exploited, while existing works are still suffering from the severe issue of data sparsity. In this work, we propose a novel session-based recommendation model, namely Category-aware Self-supervised Graph Neural Network (namely CSGNN), which adopts a pre-training layer for capturing the features of items and categories, as well as the correlations among them. Especially, we build a category-aware heterogeneous hypergraph composed of item nodes and category nodes, which enhances the information learning in the current session. Then we design item-level and category-level self-attention models to represent the information of item and category, respectively, and integrate global and local preference of user for session-based recommendation. Finally, we combine self-supervised learning by constructing a category-aware session graph to further enhance the performance CSGNN and alleviate the data sparsity problem. Comprehensive experiments are conducted on three real-world datasets, Nowplaying, Diginetica, and Tmall, and the results show that the proposed model CSGNN achieves better performance than session-based recommendation baselines with several state-of-the-art approaches.

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