2022
DOI: 10.21203/rs.3.rs-2216761/v1
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BejaGNN: Behavior-based Java Malware Detection via Graph Neural Network

Abstract: As a popular platform-independent language, Java is widely used in enterprise applications. In the past few years, language vulnerabilities exploited by Java malware have become increasingly prevalent, which cause threats for multi-platform. Security researchers continuously propose various approaches for fighting against Java malware programs. However, the presence of complex hidden techniques, such as code obfuscation, makes identifying complicated Java malware become challenging. Therefore, there is an urge… Show more

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