Institutional Repository | Ajayi Crowther University
Please use this identifier to cite or link to this item: https://repository.acu.edu.ng:443//handle/123456789/360
Title: Hybrid Design using Counter Propagation Neural Network-Genetic Algorithm Model for the Anomaly Detection in Online Transaction
Authors: Amusan, D.G.
Olabode, A.O.
Ojo, O.S.
Folowosele, A.O.
Oyediran, M.O.
Keywords: Anomaly Detection
Counter propagation neural network
Credit card fraud
Genetic algorithm
Model
Online transactions
Issue Date: 20-Sep-2019
Publisher: International Journal of Advances in Scientific Research and Engineering (ijasre)
Abstract: In e-commerce, credit card fraud is an evolving challenge. The increase in the number of credit card transactions provides more opportunity for fraudsters to steal credit card numbers and execute fraud. Fraud detection is a continuously evolving discipline to tackle ever changing tactics to commit fraud. Existing fraud detection systems have not been so much efficient to reduce fraud transaction rate. Improvement in fraud detection practices has become essential to maintain existence of payment system. This research designed hybrid of Counter Propagation Neural Network and genetic algorithm (CPNN-GA) for the detection of anomaly in any online transactions.
URI: http://repository.acu.edu.ng:8080/jspui/handle/123456789/360
Appears in Collections:Department of Computer Engineering

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