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Towards Adversarially Superior Malware Detection Models: An Adversary Aware Proactive Approach using Adversarial Attacks and Defenses

  • 28-09-2022
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Abstract

The proliferation of smartphones and the increasing adoption of Android operating systems have made them prime targets for malware. This article delves into the challenges posed by malware and the limitations of traditional detection methods. It introduces machine learning and deep learning classifiers as promising solutions but highlights their vulnerability to adversarial attacks. The authors propose two innovative evasion attacks, GradAA and GreedAA, which can transform malware applications into adversarial ones, bypassing detection systems. To counter these threats, the article presents two robust defense strategies: Adversarial Retraining and Correlation Distillation Retraining. These methods significantly enhance the detection models' resilience against adversarial attacks, making the article a vital resource for cybersecurity professionals seeking to fortify their malware detection systems.

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Title
Towards Adversarially Superior Malware Detection Models: An Adversary Aware Proactive Approach using Adversarial Attacks and Defenses
Authors
Hemant Rathore
Adithya Samavedhi
Sanjay K. Sahay
Mohit Sewak
Publication date
28-09-2022
Publisher
Springer US
Published in
Information Systems Frontiers / Issue 2/2023
Print ISSN: 1387-3326
Electronic ISSN: 1572-9419
DOI
https://doi.org/10.1007/s10796-022-10331-z
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