安全的互联网金融交易:多因素身份验证与机器学习相结合的框架

AI Pub Date : 2024-01-10 DOI:10.3390/ai5010010
AlsharifHasan Mohamad Aburbeian, Manuel Fernández-Veiga
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引用次数: 0

摘要

在金融服务日益数字化的时代,确保在线金融交易的安全已成为一个至关重要的问题。过渡到数字平台进行日常交易的过程中,客户可能面临来自网络犯罪分子的风险。本研究提出了一个结合多因素身份验证和机器学习的框架,以提高在线金融交易的安全性。我们的方法基于两层安全性。第一层结合两个因素对用户进行身份验证。第二层利用机器学习组件,在系统检测到潜在欺诈时触发。该机器学习层将面部识别作为进一步保护的决定性认证因素。为了建立机器学习模型,测试了四种监督分类器:逻辑回归、决策树、随机森林和天真贝叶斯。结果显示,各分类器的准确率分别为 97.938%、97.881%、96.717% 和 92.354%。这项研究的优越性在于其方法论,它将机器学习整合为多因素身份验证框架的嵌入层,以解决可用性、有效性和各种电子商务平台功能的动态特性问题。随着金融环境的不断变化,在今后的工作中将考虑不断探索认证因素和数据集,以增强和调整安全措施。
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Secure Internet Financial Transactions: A Framework Integrating Multi-Factor Authentication and Machine Learning
Securing online financial transactions has become a critical concern in an era where financial services are becoming more and more digital. The transition to digital platforms for conducting daily transactions exposed customers to possible risks from cybercriminals. This study proposed a framework that combines multi-factor authentication and machine learning to increase the safety of online financial transactions. Our methodology is based on using two layers of security. The first layer incorporates two factors to authenticate users. The second layer utilizes a machine learning component, which is triggered when the system detects a potential fraud. This machine learning layer employs facial recognition as a decisive authentication factor for further protection. To build the machine learning model, four supervised classifiers were tested: logistic regression, decision trees, random forest, and naive Bayes. The results showed that the accuracy of each classifier was 97.938%, 97.881%, 96.717%, and 92.354%, respectively. This study’s superiority is due to its methodology, which integrates machine learning as an embedded layer in a multi-factor authentication framework to address usability, efficacy, and the dynamic nature of various e-commerce platform features. With the evolving financial landscape, a continuous exploration of authentication factors and datasets to enhance and adapt security measures will be considered in future work.
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