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2017 | OriginalPaper | Buchkapitel

Metamorphic Malware Detection by PE Analysis with the Longest Common Sequence

verfasst von : Thanh Nguyen Vu, Toan Tan Nguyen, Hieu Phan Trung, Thao Do Duy, Ke Hoang Van, Tuan Dinh Le

Erschienen in: Future Data and Security Engineering

Verlag: Springer International Publishing

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Abstract

Metamorphic malware detection is one of the most challenging tasks of antivirus software because of the difference in signatures of new variants from preceding one [1]. This paper proposes the method for the metamorphic malware detection by Portable Executable (PE) Analysis with the Longest Common Sequence (LCS). The proposed method contains the following phase: The raw feature extraction obtains valuable features like the information of Windows PE files which are PE header information, dependencies imports and API call functions, the code segments inside each of Windows PE file. Next, these segments are used for generating the detectors, which are later used to determine affinities with code segments of executable files by the longest common sequence algorithm. Finally, header, imports, API call information and affinities are combine into vectors as input for classifiers are used for classification after a dimensionality reduction. The experimental results showed that the proposed method can achieve up to 87.1% precision, 63.3% recall for benign and 92.6% precision, 93.7% for average malware.

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Metadaten
Titel
Metamorphic Malware Detection by PE Analysis with the Longest Common Sequence
verfasst von
Thanh Nguyen Vu
Toan Tan Nguyen
Hieu Phan Trung
Thao Do Duy
Ke Hoang Van
Tuan Dinh Le
Copyright-Jahr
2017
DOI
https://doi.org/10.1007/978-3-319-70004-5_18