基于图神经网络的联邦规则推荐系统

Yuhang Yao, Mohammad Mahdi Kamani, Zhongwei Cheng, Lin Chen, Carlee Joe-Wong, Tianqiang Liu
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引用次数: 1

摘要

物联网(IoT)设备为“智能”家居带来的大部分价值在于它们能够自动触发其他设备的动作:例如,智能摄像头可以触发智能锁来开门。然而,手动为智能设备或应用程序设置这些规则既耗时又低效。规则推荐系统可以根据先前部署的规则(例如,在其他人的智能家居中)学习哪些规则是流行的,从而自动为用户推荐规则。传统的推荐公式需要一个中央服务器来记录许多用户家中使用的规则,这损害了他们的隐私,并使他们容易受到对中央服务器规则数据库的攻击。此外,这些解决方案通常利用一般的用户项矩阵方法,而这些方法不能完全利用规则推荐问题的结构。在本文中,我们提出了一个新的规则推荐系统,称为FedRule,以解决这些挑战。根据每个用户使用的规则构建一个图,并将规则推荐表述为这些图中的链接预测任务。这个公式使我们能够设计一个联邦训练算法,能够保持用户数据的私密性。大量的实验证实了我们的说法,证明FedRule具有与集中式设置相当的性能,并且优于传统解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedRule: Federated Rule Recommendation System with Graph Neural Networks
Much of the value that IoT (Internet-of-Things) devices bring to “smart” homes lies in their ability to automatically trigger other devices’ actions: for example, a smart camera triggering a smart lock to unlock a door. Manually setting up these rules for smart devices or applications, however, is time-consuming and inefficient. Rule recommendation systems can automatically suggest rules for users by learning which rules are popular based on those previously deployed (e.g., in others’ smart homes). Conventional recommendation formulations require a central server to record the rules used in many users’ homes, which compromises their privacy and leaves them vulnerable to attacks on the central server’s database of rules. Moreover, these solutions typically leverage generic user-item matrix methods that do not fully exploit the structure of the rule recommendation problem. In this paper, we propose a new rule recommendation system, dubbed as FedRule, to address these challenges. One graph is constructed per user upon the rules s/he is using, and the rule recommendation is formulated as a link prediction task in these graphs. This formulation enables us to design a federated training algorithm that is able to keep users’ data private. Extensive experiments corroborate our claims by demonstrating that FedRule has comparable performance as the centralized setting and outperforms conventional solutions.
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