Proactive cyber fraud response: a comprehensive framework from detection to mitigation in banks

Neha Chhabra Roy, Sreeleakha P.
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Abstract

Purpose This study addresses the ever-increasing cyber risks confronting the global banking sector, particularly in India, amid rapid technological advancements. The purpose of this study is to de velop an innovative cyber fraud (CF) response system that effectively controls cyber threats, prioritizes fraud, detects early warning signs (EWS) and suggests mitigation measures. Design/methodology/approach The methodology involves a detailed literature review on fraud identification, assessment methods, prevention techniques and a theoretical model for fraud prevention. Machine learning-based data analysis, using self-organizing maps, is used to assess the severity of CF dynamically and in real-time. Findings Findings reveal the multifaceted nature of CF, emphasizing the need for tailored control measures and a shift from reactive to proactive mitigation. The study introduces a paradigm shift by viewing each CF as a unique “fraud event,” incorporating EWS as a proactive intervention. This innovative approach distinguishes the study, allowing for the efficient prioritization of CFs. Practical implications The practical implications of such a study lie in its potential to enhance the banking sector’s resilience to cyber threats, safeguarding stability, reputation and overall risk management. Originality/value The originality stems from proposing a comprehensive framework that combines machine learning, EWS and a proactive mitigation model, addressing critical gaps in existing cyber security systems.
积极应对网络欺诈:银行从检测到缓解的综合框架
目的 本研究针对全球银行业(尤其是印度银行业)在快速技术进步中面临的日益增长的网络风险。本研究的目的是开发一种创新的网络欺诈(CF)响应系统,该系统可有效控制网络威胁、优先处理欺诈行为、检测预警信号(EWS)并提出缓解措施。研究结果研究结果揭示了 CF 的多面性,强调了采取量身定制的控制措施以及从被动缓解向主动缓解转变的必要性。该研究将每个 CF 视为一个独特的 "欺诈事件",将 EWS 作为一种主动干预措施,从而引入了一种范式转变。这项研究的实际意义在于,它有可能增强银行业抵御网络威胁的能力,维护银行业的稳定、声誉和整体风险管理。独创性/价值独创性源于提出了一个综合框架,将机器学习、EWS 和主动缓解模型结合在一起,解决了现有网络安全系统中的关键漏洞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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