Analysis of cyberfraud in the South African banking industry: a multiple regression approach

Q1 Social Sciences Journal of Financial Crime Pub Date : 2023-12-08 DOI:10.1108/jfc-04-2023-0094
O. Akinbowale, Polly Mashigo, M. Zerihun
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Abstract

Purpose The purpose of this study is to analyse cyberfraud in the South African banking industry using a multiple regression approach and develop a predictive model for the estimation and prediction of financial losses due to cyberfraud. Design/methodology/approach To mitigate the occurrence of cyberfraud, this study uses the multiple regression approach to correlate the relationship between financial loss and cyberfraud activities. The cyberfraud activities in South Africa are classified into three, namely, digital banking application, online and mobile banking fraud. Secondary data that captures the rate of cyberfraud occurrences within these three major categories with their resulting financial losses were used for the multiple regression analysis that was carried out in the Statistical Package for Social Science (SPSS, 2022 environment). Findings The results obtained indicate that the South African financial institutions still incur significant financial losses due to cyberfraud perpetration. The two main independent variables used to estimate the magnitude of financial loss in the South Africa’s banking industry are online (internet) banking fraud (X2) and mobile banking fraud (X3). Furthermore, a multiple regression model equation was developed for the prediction of financial loss as a function of the two independent variables (X2 and X3). Practical implications This study adds to the literature on cyberfraud mitigation. The findings may promote the combat against cyberfraud in the South Africa’s financial institutions. It may also assist South Africa’s financial institutions to predict the financial loss that financial institutions can incur over time. It is recommended that South Africa’s financial institutions pay attention to these two key variables and mitigate any associated risks as they are crucial in determining their profitability. Originality/value Existing literature indicated significant financial losses to cyberfraud perpetration without establishing any relationship between the magnitude of losses incurred and the prevalent forms of cyberfraud. Thus, the novelty of this study lies in the analysis of cyberfraud in the South African banking industry using a multiple regression approach to link financial losses to the perpetration of the prevalent forms of cyberfraud. It also develops a predictive model for the estimation and projection of financial losses.
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南非银行业网络欺诈分析:多元回归法
本研究的目的是使用多元回归方法分析南非银行业的网络欺诈,并开发一个预测模型,用于估计和预测网络欺诈造成的财务损失。设计/方法/方法为了减少网络欺诈的发生,本研究使用多元回归方法来关联经济损失与网络欺诈活动之间的关系。南非的网络欺诈活动分为三种,即数字银行应用,网上和手机银行欺诈。在这三个主要类别中捕获网络欺诈发生率及其造成的经济损失的次要数据用于在社会科学统计包(SPSS, 2022环境)中进行的多元回归分析。研究结果表明,南非金融机构仍然因网络欺诈行为而遭受重大财务损失。用于估计南非银行业金融损失规模的两个主要独立变量是在线(互联网)银行欺诈(X2)和移动银行欺诈(X3)。进一步,建立了以两个自变量(X2和X3)为函数的经济损失预测多元回归模型方程。实际意义本研究增加了网络欺诈缓解的文献。这一发现可能会推动南非金融机构打击网络欺诈。它还可以帮助南非的金融机构预测金融机构随着时间的推移可能产生的财务损失。建议南非的金融机构注意这两个关键变量,并减轻任何相关风险,因为它们对决定其盈利能力至关重要。原创性/价值现有文献表明,网络欺诈行为造成了重大的经济损失,但没有在损失的规模与网络欺诈的普遍形式之间建立任何关系。因此,本研究的新颖之处在于对南非银行业的网络欺诈进行分析,使用多元回归方法将财务损失与网络欺诈的普遍形式联系起来。它还开发了一个预测模型,用于估计和预测财务损失。
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来源期刊
Journal of Financial Crime
Journal of Financial Crime Social Sciences-Law
CiteScore
3.10
自引率
0.00%
发文量
71
期刊介绍: The Journal of Financial Crime, the leading journal in this field, publishes authoritative, practical and detailed insight in the most serious and topical issues relating to the control and prevention of financial crime and related abuse. The journal''s articles are authored by some of the leading international scholars and practitioners in the fields of law, criminology, economics, criminal justice and compliance. Consequently, articles are perceptive, evidence based and have policy impact. The journal covers a wide range of current topics including, but not limited to: • Tracing through the civil law of the proceeds of fraud • Cyber-crime: prevention and detection • Intelligence led investigations • Whistleblowing and the payment of rewards for information • Identity fraud • Insider dealing prosecutions • Specialised anti-corruption investigations • Underground banking systems • Asset tracing and forfeiture • Securities regulation and enforcement • Tax regimes and tax avoidance • Deferred prosecution agreements • Personal liability of compliance managers and professional advisers
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