Title :
JavaScript Malicious Codes Analysis Based on Naive Bayes Classification
Author :
Yongle Hao ; Hongliang Liang ; Daijie Zhang ; Qian Zhao ; Baojiang Cui
Author_Institution :
China Inf. Technol. Security Evaluation Center, Beijing, China
Abstract :
Given the security threats of JavaScript malicious codes attacks in the Internet environment, this paper presents a method that uses the Naive Bayes classification to analyze JavaScript malicious codes. The method uses many malicious and normal sample data, and trains the classifier using extended API symbol features with a high degree of predictability of malicious codes, which contain variable names, function names, string constants and comments extracted from the JavaScript codes. Experiments show that the analysis method of JavaScript malicious codes is effective and achieves high accuracy.
Keywords :
Bayes methods; Java; computer crime; pattern classification; API symbol features; Internet environment; JavaScript malicious codes analysis; JavaScript malicious codes attacks; classifier; function names; malicious codes predictability; naive Bayes classification; security threats; string constants; variable names; Accuracy; Browsers; Feature extraction; Noise measurement; Security; Training; Web pages; JavaScript; malicious codes; Naive Bayes; API symbol features;
Conference_Titel :
P2P, Parallel, Grid, Cloud and Internet Computing (3PGCIC), 2014 Ninth International Conference on
Conference_Location :
Guangdong
DOI :
10.1109/3PGCIC.2014.147