JStill: mostly static detection of obfuscated malicious JavaScript code

@inproceedings{Xu2013JStillMS,
  title={JStill: mostly static detection of obfuscated malicious JavaScript code},
  author={Wei Xu and Fangfang Zhang and Sencun Zhu},
  booktitle={CODASPY},
  year={2013}
}
The dynamic features of the JavaScript language not only promote various means for users to interact with websites through Web browsers, but also pose serious security threats to both users and websites. On top of this, obfuscation has become a popular technique among malicious JavaScript code that tries to hide its malicious purpose and to evade the detection of anti-virus software. To defend against obfuscated malicious JavaScript code, in this paper we propose a mostly static approach called… CONTINUE READING
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