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Stealthy Targeted Data Poisoning Attack on Knowledge Graphs

机译:隐身针对知识图表的毒害攻击

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A host of different KG embedding techniques have emerged recently and have been empirically shown to be very effective in accurately predicting missing facts in a KG, thus improving its coverage and quality. Unfortunately, embedding techniques can fall prey to adversarial data poisoning attack. In this form of attack, facts may be added to or deleted from a KG, called performing perturbations, that results in the manipulation of the plausibility of target facts in a KG. While recent works confirm this intuition, the attacks considered there ignore the risk of exposure. Intuitively, an attack is of limited value if it is highly likely to be caught, i.e., exposed. To address this, we introduce a notion of the exposure risk and propose a novel problem of attacking a KG by means of perturbations where the goal is to maximize the manipulation of the target fact’s plausibility while keeping the risk of exposure under a given budget. We design a deep reinforcement learning-based framework, called RATA, that learns to use low-risk perturbations without compromising on the performance, i.e., manipulation of target fact plausibility. We test the performance of RATA against recently proposed strategies for KG attacks, on two different benchmark datasets and on different kinds of target facts. Our experiments show that RATA achieves state-of-the-art performance even while using a fraction of the risk.
机译:最近出现了一系列不同的KG嵌入技术,并且经过经验证明在准确地预测KG中的缺失事实方面非常有效,从而提高其覆盖率和质量。不幸的是,嵌入技术可以牺牲对抗对抗数据中毒攻击的牺牲品。在这种形式的攻击中,可以将事实添加到kg或被称为扰动的kg中,这导致在kg中操纵目标事实的合理性。虽然最近的作品确认了这种直觉,但被认为的攻击忽略了曝光的风险。直观地,如果高可能被捕获,即暴露,攻击是有限的。为了解决这个问题,我们介绍了曝光风险的概念,并提出了一种通过扰动攻击kg的新问题,其中目标是最大限度地提高目标事实的操纵,同时保持在给定预算下暴露的风险。我们设计了一个被称为RATA的深度加强学习框架,学习使用低风险扰动而不会影响性能,即对目标事实合理性的操纵。我们测试RATA对最近拟议的kg攻击策略的表现,两个不同的基准数据集和不同类型的目标事实。我们的实验表明,即使使用风险的一小部分,RATA也能实现最先进的性能。

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