EarlyMalDetect: A Novel Approach for Early Windows Malware Detection Based on Sequences of API Calls
In this work, we propose EarlyMalDetect, a novel approach for early Windows malware detection based on sequences of API calls. Our approach leverages generative transformer models and attention-guided deep recurrent neural networks to accurately identify and detect patterns of malicious behaviors in...
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Zusammenfassung: | In this work, we propose EarlyMalDetect, a novel approach for early Windows
malware detection based on sequences of API calls. Our approach leverages
generative transformer models and attention-guided deep recurrent neural
networks to accurately identify and detect patterns of malicious behaviors in
the early stage of malware execution. By analyzing the sequences of API calls
invoked during execution, the proposed approach can classify executable files
(programs) as malware or benign by predicting their behaviors based on a few
shots (initial API calls) invoked during execution. EarlyMalDetect can predict
and reveal what a malware program is going to perform on the target system
before it occurs, which can help to stop it before executing its malicious
payload and infecting the system. Specifically, EarlyMalDetect relies on a
fine-tuned transformer model based on API calls which has the potential to
predict the next API call functions to be used by a malware or benign
executable program. Our extensive experimental evaluations show that the
proposed approach is highly effective in predicting malware behaviors and can
be used as a preventive measure against zero-day threats in Windows systems. |
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DOI: | 10.48550/arxiv.2407.13355 |