Leveraging Machine Learning in Financial Fraud Forensics in the Age of Cybersecurity

Md Ariful Haque, S. Shetty
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Abstract

Financial sectors are lucrative cyber-attack targets because of their immediate financial gain. As a result, financial institutions face challenges in developing systems that can automatically identify security breaches and separate fraudulent transactions from legitimate transactions. Today, organizations widely use machine learning techniques to identify any fraudulent behavior in customers' transactions. However, machine learning techniques are often challenging because of financial institutions' confidentiality policy, leading to not sharing the customer transaction data. This chapter discusses some crucial challenges of handling cybersecurity and fraud in the financial industry and building machine learning-based models to address those challenges. The authors utilize an open-source e-commerce transaction dataset to illustrate the forensic processes by creating a machine learning model to classify fraudulent transactions. Overall, the chapter focuses on how the machine learning models can help detect and prevent fraudulent activities in the financial sector in the age of cybersecurity.
利用机器学习在网络安全时代的金融欺诈取证
金融部门是利润丰厚的网络攻击目标,因为他们的直接经济利益。因此,金融机构在开发能够自动识别安全漏洞并将欺诈交易与合法交易分开的系统方面面临挑战。今天,组织广泛使用机器学习技术来识别客户交易中的任何欺诈行为。然而,由于金融机构的保密政策,机器学习技术往往具有挑战性,导致不共享客户交易数据。本章讨论了处理金融行业网络安全和欺诈的一些关键挑战,并构建了基于机器学习的模型来应对这些挑战。作者利用一个开源的电子商务交易数据集,通过创建一个机器学习模型来对欺诈交易进行分类,来说明取证过程。总体而言,本章重点介绍了在网络安全时代,机器学习模型如何帮助检测和防止金融部门的欺诈活动。
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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