DocumentCode :
721101
Title :
An Approach to Predict Drive-by-Download Attacks by Vulnerability Evaluation and Opcode
Author :
Adachi, Takashi ; Omote, Kazumasa
Author_Institution :
Japan Adv. Inst. of Sci. & Technol., Ishikawa, Japan
fYear :
2015
fDate :
24-26 May 2015
Firstpage :
145
Lastpage :
151
Abstract :
Drive-by-download attacks exploit vulnerabilities in Web browsers, and users are unnoticeably downloading malware which accesses to the compromised Web sites. A number of detection approaches and tools against such attacks have been proposed so far. Especially, it is becoming easy to specify vulnerabilities of attacks, because researchers well analyze the trend of various attacks. Unfortunately, in the previous schemes, vulnerability information has not been used in the detection/prediction approaches of drive-by-download attacks. In this paper, we propose a prediction approach of "malware downloading" during drive-by-download attacks (approach-I), which uses vulnerability information. Our experimental results show our approach-I achieves the prediction rate (accuracy) of 92%, FNR of 15% and FPR of 1.0% using Naive Bayes. Furthermore, we propose an enhanced approach (approach-II) which embeds Opcode analysis (dynamic analysis) into our approach-I (static approach). We implement our approach-I and II, and compare the three approaches (approach-I, II and Opcode approaches) using the same datasets in our experiment. As a result, our approach-II has the prediction rate of 92%, and improves FNR to 11% using Random Forest, compared with our approach-I.
Keywords :
Web sites; invasive software; learning (artificial intelligence); system monitoring; FNR; FPR; Opcode analysis; Web browsers; Web sites; attack vulnerabilities; drive-by-download attack prediction; dynamic analysis; malware downloading; naive Bayes; prediction rate; random forest; static approach; vulnerability evaluation; vulnerability information; Browsers; Feature extraction; Machine learning algorithms; Malware; Predictive models; Probability; Web pages; Drive-by-Download Attacks; Malware; Supervised Machine Learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Security (AsiaJCIS), 2015 10th Asia Joint Conference on
Conference_Location :
Kaohsiung
Type :
conf
DOI :
10.1109/AsiaJCIS.2015.17
Filename :
7153949
Link To Document :
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