大数据与人工智能融合6G网络安全提升高校财务管理

IF 0.5 Q4 TELECOMMUNICATIONS
Jun Liang, Ling Pu,  WeiweiSun
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引用次数: 0

摘要

在6G网络结构下,大数据与人工智能的融合有利于提高高校财务管理系统的网络安全。因此,本研究建议在6G架构中整合BD和AI。因此,传统的集中式安全系统在快速数字化的金融交易中是无效的。因为这些传统系统容易受到单点故障(SPF)、延迟威胁检测和数据隐私泄露的影响。在实时金融背景下,这些传统系统在保护网络免受高级网络威胁方面面临困难。这些情况将要求在快速发展的6G结构中建立一个分散、自适应和隐私保护(PP)的安全框架。该框架有助于在不影响重要数据的情况下进行金融交易异常检测。因此,本研究提出一种新的基于联邦学习(FL)的金融安全AD (FL-AD- fs)框架。为了在多个边缘设备上协同训练AI模型,该建议模型使用FL。该应用程序还将确保数据的隐私性。然后,在金融业务中,该系统与支持6g (EC)的边缘计算集成,促进了RT AD和威胁缓解。进行了仿真;从结果来看,很明显,建议的FL-AD-FS模型通过降低假阳性率(fpr),提高检测(ACC)准确性和最小化延迟来执行得更好。在大学背景下,通过该方法可以实现对金融交易的安全、快速、可靠的监控。为了彻底改变数字金融系统中的网络安全,FL- ad - fs框架展示了FL、AI和6G技术集成的潜力。对于现代大学的财务管理,这种建议的方法创建了一个定制的、可扩展的、安全和隐私意识的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integrating Big Data and AI for Network Security in 6G to Enhance University Financial Management

Integrating Big Data and AI for Network Security in 6G to Enhance University Financial Management

In the 6G network structures, the integration of Big Data (BD) and artificial intelligence (AI) is beneficial for the purpose of improving cybersecurity in university financial management systems. So, the integration of the BD and AI in the 6G structures are suggested in this study. Then, the conventional centralized security systems are ineffective in the rapid digitalization of financial transactions. Because these conventional systems are susceptible to single points of failure (SPF), delayed threat detection, and data privacy breaches. In the real-time (RT) financial backgrounds, these conventional systems face difficulties in protecting the network against advanced cyber threats. These situations will call for a decentralized, adaptive, and privacy-preserving (PP) security framework in the rapidly evolving 6G structures. This demanded framework may help in anomaly detection (AD) in financial transactions without affecting vital data. Thus, a novel federated learning (FL)-based AD in financial security (FL-AD-FS) framework is suggested in this study. To train the AI models collaboratively over several edge devices, this suggested model utilizes FL. This application will also ensure the privacy of the data. Then, in financial operations, the RT AD and threat mitigation was facilitated by the system, as it integrates with 6G-enabled (EC) edge computing. The simulations were conducted; from the outcomes, it is clear that the suggested FL-AD-FS model executes better by reducing false positive rates (FPRs), increasing detection (ACC) accuracy, and minimizing latency. In university backgrounds, secure, fast, and reliable monitoring of financial transactions was facilitated by this suggested method. For revolutionizing cybersecurity in digital financial systems, the potential of the integration of the FL, AI, and 6G technologies is demonstrated by the FL-AD-FS framework. For modern university financial management, this suggested method creates a customized scalable, secure, and privacy-aware solution.

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