Malware detection and analysis can be a burdensome task for incident responders. As such, research has turned to machine learning to automate malware detection and malware family classification. Existing work extracts and engineers static and dynamic features from the malware sample to train classifiers. Despite promising results, such techniques assume that the analyst has access to the malware executable file. Self-deleting malware invalidates this assumption and requires analysts to find forensic evidence of malware execution for further analysis. In this paper, we present and evaluate an approach to detecting malware that executed on a Windows target and further classify the malware into its associated family to provide semantic insight. Specifically, we engineer features from the Windows prefetch file, a file system forensic artifact that archives process information. Results show that it is possible to detect the malicious artifact with 99% accuracy; furthermore, classifying the malware into a fine-grained family has comparable performance to techniques that require access to the original executable. We also provide a thorough security discussion of the proposed approach against adversarial diversity.
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Artificial Intelligence Assisted Malware Analysis
This tutorial provides a review of the state-of-the-art research and the applications of Artificial Intelligence and Machine Learning for malware analysis. We will provide an overview, background and results with respect to the three main malware analysis approaches: static malware analysis, dynamic malware analysis and online malware analysis. Further, we will provide a simplified hands-on tutorial of applying ML algorithm for dynamic malware analysis in cloud IaaS.
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- NSF-PAR ID:
- 10229626
- Date Published:
- Journal Name:
- 2021 ACM Workshop on Secure and Trustworthy Cyber-Physical Systems
- Page Range / eLocation ID:
- 75 to 77
- Format(s):
- Medium: X
- Sponsoring Org:
- National Science Foundation
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