Poisoning Attack Anticipation in Mobile Crowdsensing: A Competitive Learning-Based Study

Alexandre Prud'Homme, B. Kantarci
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引用次数: 3

Abstract

Mobile Crowdsensing is prone to adversarial attacks particularly the data injection attacks to mislead the servers in the decision-making process. This paper aims to tackle the problem of threat anticipation from the standpoint of data poisoning attacks, and aims to model various classifiers to model the behaviour of the adversaries in a Mobile Crowdsensing setting. To this end, we study and quantify the impact of competitive learning-based data poisoning in a Mobile Crowdsensing environment by considering a black-box attack through a self organizing map. Under various machine learning classifiers in the decision-making platforms, it has been shown that the accuracy of the crowdsensing platform decisions are prone to a decrease in the range of 18%-22% when an adversary pursues a competitive learning-based data poisoning attack on the crowdsensing platform. Furthermore, we also show the robustness of certain classifiers under increasing poisoned samples.
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移动群体感知中的中毒攻击预测:一个基于竞争学习的研究
移动众测容易受到对抗性攻击,尤其是数据注入攻击,在决策过程中误导服务器。本文旨在从数据中毒攻击的角度解决威胁预测问题,并旨在对各种分类器进行建模,以模拟移动众传感设置中对手的行为。为此,我们研究并量化了基于竞争性学习的数据中毒在移动众测环境中的影响,通过自组织地图考虑黑箱攻击。在决策平台中的各种机器学习分类器下,研究表明,当对手对众测平台进行基于学习的竞争性数据中毒攻击时,众测平台决策的准确性容易下降18%-22%。此外,我们还证明了某些分类器在增加中毒样本下的鲁棒性。
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