Title
Predicting Phishing Websites Using Classification Mining Techniques with Experimental Case Studies
Abstract
Classification Data Mining (DM) Techniques can be a very useful tool in detecting and identifying e-banking phishing websites. In this paper, we present a novel approach to overcome the difficulty and complexity in detecting and predicting e-banking phishing website. We proposed an intelligent resilient and effective model that is based on using association and classification Data Mining algorithms. These algorithms were used to characterize and identify all the factors and rules in order to classify the phishing website and the relationship that correlate them with each other. We implemented six different classification algorithm and techniques to extract the phishing training data sets criteria to classify their legitimacy. We also compared their performances, accuracy, number of rules generated and speed. A Phishing Case study was applied to illustrate the website phishing process. The rules generated from the associative classification model showed the relationship between some important characteristics like URL and Domain Identity, and Security and Encryption criteria in the final phishing detection rate. The experimental results demonstrated the feasibility of using Associative Classification techniques in real applications and its better performance as compared to other traditional classifications algorithms.
Year
DOI
Venue
2010
10.1109/ITNG.2010.117
Information Technology: New Generations
Keywords
Field
DocType
fuzzy logic,skin,web server,prediction algorithms,url,information security,classification,training data,web pages,association,security,classification algorithms,machine learning,data mining,delta modulation
Data mining,Associative property,Phishing,Computer science,Fuzzy logic,Encryption,Statistical classification,Data mining algorithm,Training data sets,Phishing detection
Conference
ISBN
Citations 
PageRank 
978-1-4244-6270-4
15
0.89
References 
Authors
13
4
Name
Order
Citations
PageRank
Maher Aburrous1593.36
M. Alamgir Hossain210716.52
Keshav Dahal318014.11
Fadi A. Thabtah453832.28