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AuRo-Rec: An unsupervised and Robust Sybil attack defense in online recommender systems

机译:AuRo-Rec:在线推荐系统中的无监督且强大的Sybil攻击防御

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With the explosive growth of online social networks (OSNs), the social commerce and online stores facilitating recommender systems (RSs) are a popular way of providing users customized information such as friends, books, goods, and so on. The major function of RSs is recommending items to their system users (i.e., potential consumers), however, malicious users attempt to continuously attack the RSs with fake identities (i.e., Sybils) by injecting false information. In this paper, we propose an Unsu-pervised and Robust Sybil attack defense in online Recommender systems (AuRo-Rec) which exploits dynamic auto-configuration of system parameters on top of the admission control concept. AuRo-Rec firstly provides highly trusted recommendations regardless of whether ratings are given by Sybils or not. To build the automatic parameter configuration required by Auto-Rec, we propose an unsupervised approach: Dynamic Threshold Auto-configuration (DTA). To evaluate our approaches, we conducted experiments against four possible Sybil attacks. The experimental results confirm that AuRo-Rec works robustly in terms of prediction shift (PS).
机译:随着在线社交网络(OSN)的爆炸性增长,促进推荐系统(RS)的社交商务和在线商店是一种向用户提供定制信息(如朋友,书籍,商品等)的流行方式。 RS的主要功能是向其系统用户(即潜在的消费者)推荐商品,但是,恶意用户试图通过注入虚假信息来不断用假身份(例如Sybils)攻击RS。在本文中,我们提出了一种在线推荐系统(AuRo-Rec)中不受监督和鲁棒的Sybil攻击防御,该系统在准入控制概念的基础上利用系统参数的动态自动配置。 AuRo-Rec首先提供高度可信赖的建议,而不管Sybils是否给出评分。为了构建Auto-Rec所需的自动参数配置,我们提出了一种无监督的方法:动态阈值自动配置(DTA)。为了评估我们的方法,我们针对四种可能的Sybil攻击进行了实验。实验结果证实,AuRo-Rec在预测偏移(PS)方面表现出色。

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