论文标题
针对属性推理攻击的联合推荐系统的全面隐私分析
Comprehensive Privacy Analysis on Federated Recommender System against Attribute Inference Attacks
论文作者
论文摘要
近年来,推荐系统对于提供满足用户喜好的个性化服务至关重要。借助个性化的推荐服务,用户可以享受各种建议,例如电影,书籍,广告,餐馆等。尽管有很大的好处,但个性化建议通常需要收集个人数据以进行用户建模和分析,这可以使用户容易受到属性推理攻击。具体而言,在属性推理攻击下,现有集中推荐人的脆弱性使恶意攻击者成为推断用户私人属性的后门,因为系统记住其培训数据的信息(即交互数据和侧面信息)。新兴的实践是在联合设置中实现推荐系统,这使所有用户设备能够协作学习共享的全局推荐剂,同时将所有培训数据保留在设备上。但是,很少探索联合推荐系统中的隐私问题。在本文中,我们首先设计了一种新颖的属性推理攻击者,以对最新的联合推荐模型进行全面的隐私分析。实验结果表明,每个模型组件针对属性推理攻击的脆弱性各不相同,强调了对新防御方法的需求。因此,我们提出了一种新型的自适应隐私方法,以在存在属性推理攻击的情况下保护用户的敏感数据,同时最大程度地提高建议准确性。两个现实世界数据集的广泛实验结果验证了我们的模型在推荐攻击方面的效率和抵抗力上的出色性能。
In recent years, recommender systems are crucially important for the delivery of personalized services that satisfy users' preferences. With personalized recommendation services, users can enjoy a variety of recommendations such as movies, books, ads, restaurants, and more. Despite the great benefits, personalized recommendations typically require the collection of personal data for user modelling and analysis, which can make users susceptible to attribute inference attacks. Specifically, the vulnerability of existing centralized recommenders under attribute inference attacks leaves malicious attackers a backdoor to infer users' private attributes, as the systems remember information of their training data (i.e., interaction data and side information). An emerging practice is to implement recommender systems in the federated setting, which enables all user devices to collaboratively learn a shared global recommender while keeping all the training data on device. However, the privacy issues in federated recommender systems have been rarely explored. In this paper, we first design a novel attribute inference attacker to perform a comprehensive privacy analysis of the state-of-the-art federated recommender models. The experimental results show that the vulnerability of each model component against attribute inference attack is varied, highlighting the need for new defense approaches. Therefore, we propose a novel adaptive privacy-preserving approach to protect users' sensitive data in the presence of attribute inference attacks and meanwhile maximize the recommendation accuracy. Extensive experimental results on two real-world datasets validate the superior performance of our model on both recommendation effectiveness and resistance to inference attacks.