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Detecting Poisoning Attacks on Machine Learning in IoT Environments

机译:在IoT环境中检测机器学习的中毒攻击

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摘要

Machine Learning (ML) plays an increasing role in Internet of Things (IoT), both in the Cloud and at the Edge, using trained models for applications from factory automation to environmental sensing. However, using ML in IoT environments presents unique security challenges. In particular, adversaries can manipulate the training data by tampering with sensors' measurements. This type of attack, known as a poisoning attack has been shown to significantly decrease overall performance, cause targeted misclassification or bad behavior, and insert "backdoors" and "neural trojans". Taking advantage of recently developed tamper-free provenance frameworks, we present a methodology that uses contextual information about the origin and transformation of data points in the training set to identify poisonous data. Our approach works with or without a trusted test data set. Using the proposed approach poisoning attacks can be effectively detected and mitigated in IoT environments with reliable provenance information.
机译:机器学习(ML)在训练有素的模型中应用从工厂自动化到环境感知的应用程序,在云和边缘的物联网(IoT)中扮演着越来越重要的角色。但是,在物联网环境中使用ML提出了独特的安全挑战。尤其是,对手可以通过篡改传感器的测量值来操纵训练数据。已证明这种类型的攻击(称为中毒攻击)会大大降低整体性能,导致有针对性的错误分类或不良行为,并插入“后门”和“神经特洛伊木马”。利用最近开发的无篡改来源框架,我们提出了一种方法,该方法使用有关训练集中数据点的起源和转换的上下文信息来识别有毒数据。我们的方法可以使用或不使用受信任的测试数据集。使用提出的方法,可以通过可靠的出处信息在物联网环境中有效检测和缓解中毒攻击。

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