N-gram-based detection of new malicious code

Computer Software and Applications Conference, 2004. COMPSAC 2004. Proceedings of the 28th Annual International(2004)

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摘要
The current commercial anti-virus software detects a virus only after the virus has appeared and caused damage. Motivated by the standard signature-based technique for detecting viruses, and a recent successful text classification method, we explore the idea of automatically detecting new malicious code using the collected dataset of the benign and malicious code. We obtained accuracy of 100% in the training data, and 98% in 3-fold cross-validation.
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关键词
computer viruses,natural languages,text analysis,3-fold cross-validation,N-gram-based detection,anti-virus software,malicious code,signature-based technique,text classification method
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