网络安全中的高级人工智能和 ML 技术:威胁检测和响应中的监督和非监督学习、强化学习和神经网络

Xianghui Meng
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引用次数: 0

摘要

在快速发展的人工智能和 ML 领域,本文探讨了它们在网络安全变革中的关键作用。本文重点介绍了入侵检测深度学习和自适应威胁建模强化学习等复杂技术的集成,强调了向人工智能驱动的网络安全解决方案的转变。研究细致分析了监督和非监督学习对威胁检测准确性的影响,以及神经网络在实时威胁识别中的动态能力。它揭示了这些方法如何增强针对复杂网络威胁的数字防御,强调了人工智能和 ML 在网络安全中的理论基础和实际应用。论文还讨论了面临的挑战和未来的发展方向,对网络安全技术不断发展的前景提出了重要见解。这一全面的研究背景为了解人工智能和 ML 在加强网络安全措施方面的独特贡献和潜力奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced AI and ML techniques in cybersecurity: Supervised and unsupervised learning, reinforcement learning, and neural networks in threat detection and response
In the rapidly advancing field of AI and ML, this paper explores their pivotal role in transforming cybersecurity. Highlighting the integration of sophisticated techniques like deep learning for intrusion detection and reinforcement learning for adaptive threat modeling, it emphasizes the shift towards AI-driven cybersecurity solutions. The study meticulously analyzes supervised and unsupervised learning's impact on threat detection accuracy and the dynamic capabilities of neural networks in real-time threat identification. It reveals how these methodologies enhance digital defenses against complex cyber threats, underscoring the theoretical underpinnings and practical applications of AI and ML in cybersecurity. The paper also discusses the challenges and future directions, contributing significant insights into the evolving landscape of cybersecurity technologies. This comprehensive research background sets the stage for understanding the unique contributions and potential of AI and ML in strengthening cybersecurity measures.
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