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Resilient Linear Classification: An Approach to Deal with Attacks on Training Data

机译:弹性线性分类:一种应对训练数据攻击的方法

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Data-driven techniques are used in cyber-physical systems (CPS) for controlling autonomous vehicles, handling demand responses for energy management, and modeling human physiology for medical devices.These data-driven techniques extract models from training data, where their performance is often analyzed with respect to random errors in the training data. However, if the training data is maliciously altered by attackers, the effect of these attacks on the learning algorithms underpinning data-driven CPS have yet to be considered. In this paper, we analyze the resilience of classification algorithms to training data attacks. Specifically, a generic metric is proposed that is tailored to measure resilience of classification algorithms with respect to worst-case tampering of the training data. Using the metric, we show that traditional linear classification algorithms are resilient under restricted conditions.To overcome these limitations, we propose a linear classification algorithm with a majority constraint and prove that it is strictly more resilient than the traditional algorithms.Evaluations on both synthetic data and a real-world retrospective arrhythmia medical case-study show that the traditional algorithms are vulnerable to tampered training data, whereas the proposed algorithm is more resilient (as measured by worst-case tampering).
机译:数据驱动技术用于网络物理系统(CPS)中,用于控制自动驾驶汽车,处理能源管理的需求响应以及为医疗设备建模人体生理学。这些数据驱动技术通常从训练数据中提取模型,而这些模型的性能通常是针对训练数据中的随机错误进行了分析。但是,如果攻击者恶意更改了训练数据,则尚未考虑这些攻击对支持数据驱动的CPS的学习算法的影响。在本文中,我们分析了分类算法在训练数据攻击中的弹性。具体而言,提出了一种通用度量,该度量经过量身定制以针对分类最坏情况下的训练数据篡改来测量分类算法的弹性。使用度量标准,我们证明了传统的线性分类算法在受限条件下具有弹性。为克服这些限制,我们提出了具有多数约束的线性分类算法,并证明了它比传统算法严格具有弹性。现实世界中的回顾性心律失常医学案例研究表明,传统算法易受篡改训练数据的影响,而所提出的算法更具弹性(通过最坏情况的篡改衡量)。

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