Please use this identifier to cite or link to this item: http://ir.futminna.edu.ng:8080/jspui/handle/123456789/4702
Title: A SOFT COMPUTING APPROACH TO DETECT E-BANKING PHISHING WEBSITES USING ARTIFICIAL NEURAL NETWORK
Other Titles: Victor Ndako Adama, J
Authors: Shafi'i, Muhammad Abdulhamid
Mubaraq, Olamide Usman
Olamide, Usman
ADAMA, Victor Ndako
Alhassan, J. K.
Keywords: Artificial Neural Network
E-banking
Phishing
Websites
Intelligent Algorithm
Soft Computing
Issue Date: 22-Sep-2018
Publisher: i-manager Journal on Computer Science
Citation: Mubaraq, O. U., Ojerinde, O. A., Adama, V. N., & Alhassan, J. K. (2018). A Soft Computing Approach to Detect E-Banking Phishing Websites using Artificial Neural Network. i-Manager's Journal on Computer Science, 6(3), 7.
Abstract: Phishing is a cybercrime that is described as an art of cloning a web page of a legitimate company with the aim of obtaining confidential data of unsuspecting internet users. Recent researches indicates that a number of phishing detection algorithms have been introduced into the cyber space, however, most of them depend on an existing blacklist or whitelist for classification. Therefore, when a new phishing web page is introduced, the detection algorithms find it difficult to correctly classifies it as phishy. In this paper, we put forward a soft computing approach called Artificial Neural Network (ANN) algorithm with confusion matrix analysis for the detection of e-banking phishing websites. The proposed ANN algorithm produces a remarkable percentage accuracy and reduced false positive rate during detection. This shows that, the ANN algorithm with confusion matrix analysis can produce a competitive results that is suitable for detecting phishing in e-banking websites.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/4702
ISSN: 2347-2227
Appears in Collections:Computer Science



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