On defending against label flipping attacks on malware detection systems

被引:0
|
作者
Rahim Taheri
Reza Javidan
Mohammad Shojafar
Zahra Pooranian
Ali Miri
Mauro Conti
机构
[1] Shiraz University of Technology,Department of Computer Engineering and Information Technology
[2] University of Padua,SPRITZ, Department of Mathematics
[3] Ryerson University,Department of Computer Science
来源
关键词
Adversarial machine learning (AML); Semi-supervised defense (SSD); Malware detection; Adversarial example; Label flipping attacks; Deep learning;
D O I
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学科分类号
摘要
Label manipulation attacks are a subclass of data poisoning attacks in adversarial machine learning used against different applications, such as malware detection. These types of attacks represent a serious threat to detection systems in environments having high noise rate or uncertainty, such as complex networks and Internet of Thing (IoT). Recent work in the literature has suggested using the K-nearest neighboring algorithm to defend against such attacks. However, such an approach can suffer from low to miss-classification rate accuracy. In this paper, we design an architecture to tackle the Android malware detection problem in IoT systems. We develop an attack mechanism based on silhouette clustering method, modified for mobile Android platforms. We proposed two convolutional neural network-type deep learning algorithms against this Silhouette Clustering-based Label Flipping Attack. We show the effectiveness of these two defense algorithms—label-based semi-supervised defense and clustering-based semi-supervised defense—in correcting labels being attacked. We evaluate the performance of the proposed algorithms by varying the various machine learning parameters on three Android datasets: Drebin, Contagio, and Genome and three types of features: API, intent, and permission. Our evaluation shows that using random forest feature selection and varying ratios of features can result in an improvement of up to 19% accuracy when compared with the state-of-the-art method in the literature.
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页码:14781 / 14800
页数:19
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