Title :
Malicious web page detection based on feature classification
Author :
Phakoontod, C. ; Limthanmaphon, B.
Author_Institution :
Dept. of Comput. & Inf. Sci., King Mongkut´s Univ. of Technol., Bangkok, Thailand
Abstract :
Malicious code detection is a major concern in computer science community in this decade. With the rapid growth of web applications, web sites have been become the attacker´s main target. Innocent users´ machines become compromised by just visiting a malicious page. This paper presents a malicious web page detection based on static feature classification. We classified features into three groups: explicit features, replicated features, and miscellaneous features. We employed Greasemonkey to develop the detection script. It provides the alert when an innocent user is visiting a malicious page. The accuracy of our detection system is 97.9% with 1.42 % of false positive and 2.76% of false negative. The average detection time is 2.49 seconds per page.
Keywords :
Web sites; feature extraction; pattern classification; security of data; Web applications; Web sites; computer science community; detection script development; explicit features; malicious Web page detection; malicious code detection; miscellaneous features; replicated features; static feature classification; Malicious web page detection; web security;
Conference_Titel :
Computing and Convergence Technology (ICCCT), 2012 7th International Conference on
Conference_Location :
Seoul
Print_ISBN :
978-1-4673-0894-6