Resilience against Adversarial Examples: Data-Augmentation Exploiting Generative Adversarial Networks

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Recently, malware classification based on Deep Neural Networks (DNN) has gained significant attention due to the rise in popularity of artificial intelligence (AI). DNN-based malware classifiers are a novel solution to combat never-before-seen malware families because this approach is able to classify malwares based on structural characteristics rather than requiring particular signatures like traditional malware classifiers. However, these DNNbased classifiers have been found to lack robustness against malwares that are carefully crafted to evade detection. These specially crafted pieces of malware are referred to as adversarial examples. We consider a clever adversary who has a thorough knowledge of DNN-based malware classifiers and will exploit it to generate a crafty malware to fool DNN-based classifiers. In this paper, we propose a DNN-based malware classifier that becomes resilient to these kinds of attacks by exploiting Generative Adversarial Network (GAN) based data augmentation. The experimental results show that the proposed scheme classifies malware, including AEs, with a false positive rate (FPR) of 3.0% and a balanced accuracy of 70.16%. These are respective 26.1% and 18.5% enhancements when compared to a traditional DNNbased classifier that does not exploit GAN.
Publisher
KSII-KOR SOC INTERNET INFORMATION
Issue Date
2021-11
Language
English
Article Type
Article
Citation

KSII TRANSACTIONS ON INTERNET AND INFORMATION SYSTEMS, v.15, no.11, pp.4105 - 4121

ISSN
1976-7277
DOI
10.3837/tiis.2021.11.013
URI
http://hdl.handle.net/10203/290530
Appears in Collection
RIMS Journal Papers
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