Fraudulent Detection Model Using Machine Learning Techniques for Unstructured Supplementary Service Data

IF 1.3 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Innovative Computing Information and Control Pub Date : 2021-10-31 DOI:10.11113/ijic.v11n2.299
Ayorinde O. Akinje, A. Fuad
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引用次数: 1

Abstract

The increase in mobile phones accessibility and technological advancement in almost every corner of the world has shaped how banks offer financial service. Such services were extended to low-end customers without a smartphone providing Alternative Banking Channels (ABCs) service, rendering regular financial service same as those on smartphones. One of the services of this ABC’s is Unstructured Supplementary Service Data (USSD), two-way communication between mobile phones and applications, which is used to render financial services all from the bank accounts linked for this USSD service. Fraudsters have taken advantage of innocent customers on this channel to carry out fraudulent activities with high impart of fraudulent there is still not an implemented fraud detection model to detect this fraud activities. This paper is an investigation into fraud detection model using machine learning techniques for Unstructured Supplementary Service Data based on short-term memory. Statistical features were derived by aggregating customers activities using a short window size to improve the model performance on selected machine learning classifiers, employing the best set of features to improve the model performance. Based on the results obtained, the proposed Fraudulent detection model demonstrated that with the appropriate machine learning techniques for USSD,  best performance was achieved with Random forest having the best result of 100% across all its performance measure, KNeighbors was second in performance measure having an average of 99% across all its performance measure while Gradient boosting was third in its performance measure, its achieved accuracy is 91.94%, precession is 86%, recall is 100% and f1 score is 92.54%. Result obtained shows two of the selected machine learning random forest and decision tree are best fit for the fraud detection in this model. With the right features derived and an appropriate machine learning algorithm, the proposed model offers the best fraud detection accuracy.
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基于机器学习技术的非结构化补充业务数据欺诈检测模型
移动电话的普及和技术的进步几乎遍及世界的每个角落,这影响了银行提供金融服务的方式。向没有智能手机的低端客户提供替代银行渠道(ABCs)服务,提供与智能手机一样的常规金融服务。该ABC的服务之一是非结构化补充服务数据(USSD),这是移动电话和应用程序之间的双向通信,用于提供所有来自该USSD服务链接的银行账户的金融服务。欺诈者利用这一渠道上的无辜客户进行欺诈活动,欺诈的可能性很高,目前还没有一个实施的欺诈检测模型来检测这种欺诈活动。本文研究了基于短期记忆的非结构化补充业务数据的机器学习欺诈检测模型。统计特征是通过使用短窗口大小聚合客户活动来获得的,以提高所选机器学习分类器上的模型性能,采用最佳特征集来提高模型性能。根据所获得的结果,所提出的欺诈检测模型表明,使用适当的USSD机器学习技术,随机森林在其所有性能度量中获得了100%的最佳结果,KNeighbors在性能度量中排名第二,在其所有性能度量中平均为99%,而梯度增强在其性能度量中排名第三,其实现的准确性为91.94%,进差为86%。召回率为100%,f1得分为92.54%。结果表明,选择的机器学习随机森林和决策树最适合该模型中的欺诈检测。通过正确的特征推导和适当的机器学习算法,该模型提供了最佳的欺诈检测精度。
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来源期刊
CiteScore
3.20
自引率
20.00%
发文量
0
审稿时长
4.3 months
期刊介绍: The primary aim of the International Journal of Innovative Computing, Information and Control (IJICIC) is to publish high-quality papers of new developments and trends, novel techniques and approaches, innovative methodologies and technologies on the theory and applications of intelligent systems, information and control. The IJICIC is a peer-reviewed English language journal and is published bimonthly
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