Graph Neural Network and Multi-view Learning Based Mobile Application Recommendation in Heterogeneous Graphs

Fenfang Xie, Zengxu Cao, Yangjun Xu, Liang Chen, Zibin Zheng
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引用次数: 3

Abstract

With the popularity of smartphones, mobile applications (mobile apps) have become a necessity in people’s lives and work. Massive apps provide users with a variety of choices, but also bring about the information overload problem. In reality, the number of apps that users have used is very limited, resulting in a very sparse interaction matrix between users and apps. It is not accurate enough to use a sparse interaction matrix to predict numerous unknown ratings, so that the recommended results cannot satisfy users. This paper aims to exploit the user’s historical behavior data and the app’s side information to make app recommendation to solve the problem of information overload. Specifically, first of all, multiple semantic meta-graphs are designed by leveraging the user information, app information, user historical usage record information, and app’s side information. Then, similarity matrices between users and apps based on different semantic meta-graphs are obtained. The graph neural network with the attention mechanism is employed to learn the collaborative information between users and apps, and to selectively aggregate the feature information of the neighbors. Finally, the multi-view learning and attention mechanism are adopted to obtain users’ ratings for apps from different perspectives. Comprehensive experiments with different numbers of training samples show that the proposed method outperforms other comparison methods.
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异构图中基于图神经网络和多视图学习的移动应用推荐
随着智能手机的普及,移动应用程序(mobile apps)已经成为人们生活和工作的必需品。海量的应用为用户提供了多种选择的同时,也带来了信息过载的问题。在现实中,用户使用的应用数量非常有限,导致用户和应用之间的交互矩阵非常稀疏。使用稀疏的交互矩阵来预测大量的未知评分是不够准确的,因此推荐的结果不能满足用户。本文旨在利用用户的历史行为数据和app的侧面信息进行app推荐,解决信息过载的问题。具体而言,首先利用用户信息、应用信息、用户历史使用记录信息和应用侧信息设计多个语义元图。然后,基于不同的语义元图,得到用户与应用之间的相似矩阵。利用具有注意机制的图神经网络学习用户与应用之间的协同信息,并选择性地聚合邻居的特征信息。最后,采用多视角学习和注意机制,从不同角度获取用户对应用的评分。不同训练样本数量的综合实验表明,该方法优于其他比较方法。
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