面向隐私保护的联邦学习:金融科技领域PII数据分析综述

Bibhu Dash, P. Sharma, Azad Ali
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引用次数: 54

摘要

人工智能和机器学习领域有了巨大的发展。这些领域的发展导致了其他金融科技领域的大幅增长。网络安全被描述为与技术相关的发展的重要组成部分。加强网络安全确保人们受到保护,数据保持安全。开发实现网络安全的人工智能已经融入了新的方法。人工智能的数据分析能力及其网络安全功能确保了隐私的显著提高。与数据隐私相关的道德概念也在大多数金融科技法规中得到提倡。这些概念和考虑都与实现所需的道德要求的需要有关。联邦学习的概念是最近发展起来的一种实现上述概念的度量。它保证了人工智能和机器学习的发展,同时保护了数据分析的隐私。该研究论文有效地描述了联邦学习的机密性问题。它描述了与它的开发相关的整个过程以及它所取得的一些贡献。展示了联邦学习在金融科技领域的广泛应用,以及为什么联邦学习对金融科技的整体发展至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Learning for Privacy-Preserving: A Review of PII Data Analysis in Fintech
There has been tremendous growth in the field of AI and machine learning. The developments across these fields have resulted in a considerable increase in other FinTech fields. Cyber security has been described as an essential part of the developments associated with technology. Increased cyber security ensures that people remain protected, and that data remains safe. New methods have been integrated into developing AI that achieves cyber security. The data analysis capabilities of AI and its cyber security functions have ensured that privacy has increased significantly. The ethical concept associated with data privacy has also been advocated across most FinTech regulations. These concepts and considerations have all been engaged with the need to achieve the required ethical requirements. The concept of federated learning is a recently developed measure that achieves the abovementioned concept. It ensured the development of AI and machine learning while keeping privacy in data analysis. The research paper effectively describes the issue of federated learning for confidentiality. It describes the overall process associated with its development and some of the contributions it has achieved. The widespread application of federated learning in FinTech is showcased, and why federated learning is essential for overall growth in FinTech.
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