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- Title
Method for Detecting Javascript Code Obfuscation based on Convolutional Neural Network.
- Authors
Huiqiang Wang; Keke Wu; Wei Jiang
- Abstract
Malicious webpage attacks occur frequently, and most of the JavaScript attack code is implemented through obfuscation. In order to further confront malicious webpage attacks, detecting JavaScript obfuscation scripts has become one of the most urgent issues to be addressed. This paper proposes a method for detecting JavaScript code obfuscation based on Convolutional Neural Networks (CNNs). Firstly, the character matrix feature method of Bigram is used to extract features of JavaScript code. Secondly, a CNN model is applied to the JavaScript code obfuscation detection, which overcomes the high requirement of the machine code learning and the low accuracy of the obfuscation feature extraction of JavaScript code. Finally, the simulation results show that this method can not only reduce the requirements for the features, but also effectively improve the accuracy of the detection of JavaScript code obfuscation.
- Subjects
JAVASCRIPT programming language; MALWARE; INTERNET security; PERSONAL information management; HTML (Document markup language)
- Publication
International Journal of Performability Engineering, 2018, Vol 14, Issue 12, p3167
- ISSN
0973-1318
- Publication type
Article
- DOI
10.23940/ijpe.18.12.p26.31673173