Title
DeMalFier: Detection of Malicious web pages using an effective classifier
Abstract
The web has become an indispensable global platform that glues together daily communication, sharing, trading, collaboration and service delivery. Web users often store and manage critical information that attracts cybercriminals who misuse the web and the internet to exploit vulnerabilities for illegitimate benefits. Malicious web pages are transpiring threatening issue over the internet because of the notoriety and their capability to influence. Detecting and analyzing them is very costly because of their qualities and intricacies. The complexities of attacks are increasing day by day because the attackers are using blended approaches of various existing attacking techniques. In this paper, a model DeMalFier (Detection of Malicious Web Pages using an Effective ClassiFier) has been developed to apply supervised learning approaches to identify malicious web pages relevant to malware distribution, phishing, drive-by-download and injection by extracting the content of web pages, URL-based features and features based on host information. Experimental evaluation of DeMalFier model achieved 99.9% accuracy recommending the impact of our approach for real-life deployment.
Year
DOI
Venue
2014
10.1109/ICDSE.2014.6974616
Data Science & Engineering
Keywords
DocType
Citations 
internet,computer crime,invasive software,learning (artificial intelligence),demalfier,url-based features,web security,cybercriminal attracts,malicious web pages,malware distribution,phishing,supervised learning approaches,threatening issue,pre-processing techniques,supervised learning
Conference
1
PageRank 
References 
Authors
0.43
5
6
Name
Order
Citations
PageRank
asha s manek1471.55
v sumithra210.43
p deepa shenoy310.43
m chandra mohan4481.89
K. R. Venugopal526748.80
L. M. Patnaik616515.46