Feature extraction process: A phishing detection approach

In order to circumvent the adverse effect of fraudulent acts committed on the internet by adversaries, different researchers have proposed various solution to this problem. One of this online fraudulent act is website phishing. Website phishing is the act of luring unsuspecting online users into divulging private and confidential information which can be used by the phisher in fraud, blackmail or other ways to negatively affect the users involved. In this paper, we propose noble features to better improve the accuracy of machine learning algorithms in classifying phish. Furthermore, ranking of these new features according to their weighted values with existing features is carried out in order to show the potency of the new feature as compared with the current features. The experimental result of the research shows that the new features are highly potent and can be used to enhance the better performance of machine learning algorithm used for phishing detection.

[1]  V. Prasanna Venkatesan,et al.  A Framework for Predicting Phishing Websites using Neural Networks , 2011, ArXiv.

[2]  Gang Liu,et al.  Automatic Detection of Phishing Target from Phishing Webpage , 2010, 2010 20th International Conference on Pattern Recognition.

[3]  Tengke Xiong,et al.  An Intelligent Anti-phishing Strategy Model for Phishing Website Detection , 2012, 2012 32nd International Conference on Distributed Computing Systems Workshops.

[4]  Niels Provos,et al.  A framework for detection and measurement of phishing attacks , 2007, WORM '07.

[5]  K. Dahal,et al.  Intelligent Phishing Website Detection System using Fuzzy Techniques , 2008, 2008 3rd International Conference on Information and Communication Technologies: From Theory to Applications.

[6]  Tommy W. S. Chow,et al.  Textual and Visual Content-Based Anti-Phishing: A Bayesian Approach , 2011, IEEE Transactions on Neural Networks.

[7]  Carolyn Penstein Rosé,et al.  CANTINA+: A Feature-Rich Machine Learning Framework for Detecting Phishing Web Sites , 2011, TSEC.

[8]  Andrew H. Sung,et al.  Detection of Phishing Attacks: A Machine Learning Approach , 2008, Soft Computing Applications in Industry.