Title :
Intelligent phishing detection parameter framework for E-banking transactions based on Neuro-fuzzy
Author :
Barraclough, P.A. ; Sexton, Graham ; Hossain, Md Aynal ; Aslam, Nauman
Author_Institution :
Comput. Sci. & Digital Technol., Univ. of Northumbria, Newcastle upon Tyne, UK
Abstract :
Phishing attacks have become more sophisticated in web-based transactions. As a result, various solutions have been developed to tackle the problem. Such solutions including feature-based and blacklist-based approaches applying machine learning algorithms. However there is still a lack of accuracy and real-time solution. Most machine learning algorithms are parameter driven, but the parameters are difficult to tune to a desirable output. In line with Jiang and Ma´s findings, this study presents a parameter tuning framework, using Neuron-fuzzy system with comprehensive features in order to maximize systems performance. The neuron-fuzzy system was chosen because it has ability to generate fuzzy rules by given features and to learn new features. Extensive experiments were conducted, using different feature-sets, two cross-validation methods, a hybrid method and different parameters and achieved 98.4% accuracy. Our results demonstrated a high performance compared to other results in the field. As a contribution, we introduced a novel parameter tuning framework based on a neuron-fuzzy with six feature-sets and identified different numbers of membership functions different number of epochs, different sizes of feature-sets on a single platform. Parameter tuning based on neuron-fuzzy system with comprehensive features can enhance system performance in realtime. The outcome will provide guidance to the researchers who are using similar techniques in the field. It will decrease difficulties and increase confidence in the process of tuning parameters on a given problem.
Keywords :
Internet; banking; fuzzy neural nets; learning (artificial intelligence); security of data; Web-based transactions; blacklist-based approach; e-banking transactions; feature-based approach; intelligent phishing detection parameter framework; machine learning algorithms; membership functions; neuron-fuzzy system; novel parameter tuning framework; Accuracy; Error analysis; Feature extraction; Fuzzy logic; Training; Tuning; FIS; Intelligent phishing detection; fuzzy inference system; neuro-fuzzy;
Conference_Titel :
Science and Information Conference (SAI), 2014
Conference_Location :
London
Print_ISBN :
978-0-9893-1933-1
DOI :
10.1109/SAI.2014.6918240