TL;DR
DAEMON is a dataset-agnostic, explainable malware classifier that effectively identifies malware families across different platforms without needing dataset-specific tuning.
Contribution
Introduces DAEMON, a novel platform-agnostic malware classification method with explainable features, validated on both Windows and Android malware datasets.
Findings
High accuracy across multiple datasets
Platform-agnostic performance demonstrated
Explainable feature mining enhances understanding
Abstract
Numerous metamorphic and polymorphic malicious variants are generated automatically on a daily basis by mutation engines that transform the code of a malicious program while retaining its functionality, in order to evade signature-based detection. These automatic processes have greatly increased the number of malware variants, deeming their fully-manual analysis impossible. Malware classification is the task of determining to which family a new malicious variant belongs. Variants of the same malware family show similar behavioral patterns. Thus, classifying newly discovered malicious programs and applications helps assess the risks they pose. Moreover, malware classification facilitates determining which of the newly discovered variants should undergo manual analysis by a security expert, in order to determine whether they belong to a new family (e.g., one whose members exploit a…
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