Title
Detecting Mobile Malicious Webpages in Real Time.
Abstract
Mobile specific webpages differ significantly from their desktop counterparts in content, layout, and functionality. Accordingly, existing techniques to detect malicious websites are unlikely to work for such webpages. In this paper, we design and implement kAYO, a mechanism that distinguishes between malicious and benign mobile webpages. kAYO makes this determination based on static features of a webpage ranging from the number of iframes to the presence of known fraudulent phone numbers. First, we experimentally demonstrate the need for mobile specific techniques and then identify a range of new static features that highly correlate with mobile malicious webpages. We then apply kAYO to a dataset of over 350,000 known benign and malicious mobile webpages and demonstrate 90 percent accuracy in classification. Moreover, we discover, characterize, and report a number of webpages missed by Google Safe Browsing and VirusTotal, but detected by kAYO. Finally, we build a browser extension using kAYO to protect users from malicious mobile websites in real-time. In doing so, we provide the first static analysis technique to detect malicious mobile webpages.
Year
DOI
Venue
2017
10.1109/TMC.2016.2575828
IEEE Trans. Mob. Comput.
Keywords
Field
DocType
Mobile communication,Feature extraction,Browsers,Uniform resource locators,Google,Security,IP networks
Mobile security,World Wide Web,Mobile search,Web browser,Web page,Computer science,Static analysis,Feature extraction,Phone,Mobile telephony
Journal
Volume
Issue
ISSN
16
8
1536-1233
Citations 
PageRank 
References 
3
0.41
31
Authors
3
Name
Order
Citations
PageRank
Chaitrali Amrutkar1534.18
Young Seuk Kim230.41
Patrick Traynor3117187.80