AI-Driven Approaches to Enhance Cybersecurity in Financial Transactions

Maheshwaran C V, Amirdavarshni V
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Abstract

A surge in digital monetary transactions has resulted in a rise in cyber threats on such platforms. Conventional security measures are slowly eroding and are, therefore, failing to a great extent in curbing these emerging risks. Artificial Intelligence (AI) holds out much promise toward robust cybersecurity through mechanisms with machine learning and anomaly detection techniques, especially natural language processing. This paper tries to explore technical insight into the AI-based framework, approaches, applications, benefits, issues, ethical concerns, and the way forward for the security of financial transactions. Key Words: AI-driven approaches, Cybersecurity, Financial transactions, Machine learning, Natural language processing (NLP), Anomaly detection, Deep learning architectures, Supervised learning, Unsupervised learning, Reinforcement learning, Adversarial machine learning, Data preprocessing, Real-time monitoring, Blockchain integration, Predictive analytics, Explainable AI, Ethical and privacy issues, Regulatory compliance, Quantum computing, Edge AI
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增强金融交易网络安全的人工智能驱动方法
数字货币交易的激增导致此类平台上的网络威胁增加。传统的安全措施正在慢慢削弱,因此在很大程度上无法遏制这些新出现的风险。人工智能(AI)通过机器学习机制和异常检测技术,特别是自然语言处理技术,为实现强大的网络安全带来了希望。本文试图从技术上深入探讨基于人工智能的框架、方法、应用、益处、问题、道德关切以及金融交易安全的未来之路。关键字人工智能驱动方法、网络安全、金融交易、机器学习、自然语言处理(NLP)、异常检测、深度学习架构、监督学习、非监督学习、强化学习、对抗式机器学习、数据预处理、实时监控、区块链集成、预测分析、可解释的人工智能、伦理和隐私问题、监管合规、量子计算、边缘人工智能
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