2024
DOI: 10.3390/s24020580
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Channel Features and API Frequency-Based Transformer Model for Malware Identification

Liping Qian,
Lin Cong

Abstract: Malicious software (malware), in various forms and variants, continues to pose significant threats to user information security. Researchers have identified the effectiveness of utilizing API call sequences to identify malware. However, the evasion techniques employed by malware, such as obfuscation and complex API call sequences, challenge existing detection methods. This research addresses this issue by introducing CAFTrans, a novel transformer-based model for malware detection. We enhance the traditional tr… Show more

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