A COMPREHENSIVE REVIEW OF ARTIFICIAL INTELLIGENCE APPLICATIONS IN ENHANCING CYBERSECURITY THREAT DETECTION AND RESPONSE MECHANISMS

Mosa Sankaram, Ms Roopesh, Sasank Rasetti, Nourin Nishat
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Abstract

This literature review explores the transformative impact of artificial intelligence (AI) on enhancing cybersecurity measures across various domains. The study systematically examines the integration of AI in Intrusion Detection Systems (IDS), malware detection, phishing detection, threat intelligence, network security, and endpoint protection. Key findings reveal that AI-driven techniques significantly outperform traditional methods, particularly in real-time threat detection, accuracy, and adaptive response capabilities. Network-based IDS benefit from supervised and unsupervised learning algorithms, improving the identification of malicious network traffic and novel attack patterns. In malware detection, AI-enhanced static and dynamic analysis methods surpass signature-based approaches by detecting previously unknown malware and complex behaviors. Phishing detection has seen substantial improvements with AI applications in email filtering and URL analysis, reducing phishing incidents despite challenges like false positives. AI's role in threat intelligence is critical, automating data analysis to uncover hidden threats and employing predictive analytics to anticipate and mitigate cyber attacks. AI techniques in network security and endpoint protection enhance real-time monitoring and authentication processes, providing robust defenses against cyber intrusions. Despite these advancements, challenges such as handling high data volumes and the need for continuous learning to adapt to emerging threats remain. This review underscores the significant advancements, practical implementations, and ongoing challenges of leveraging AI in cybersecurity, highlighting its potential to fortify digital defenses and address the complexities of contemporary cyber threats.
全面审查人工智能在加强网络安全威胁检测和响应机制方面的应用
本文献综述探讨了人工智能(AI)对加强各领域网络安全措施的变革性影响。研究系统地探讨了人工智能在入侵检测系统(IDS)、恶意软件检测、网络钓鱼检测、威胁情报、网络安全和端点保护中的整合。主要研究结果表明,人工智能驱动的技术明显优于传统方法,尤其是在实时威胁检测、准确性和自适应响应能力方面。基于网络的 IDS 受益于监督和非监督学习算法,提高了对恶意网络流量和新型攻击模式的识别能力。在恶意软件检测方面,人工智能增强型静态和动态分析方法通过检测以前未知的恶意软件和复杂行为,超越了基于签名的方法。随着人工智能在电子邮件过滤和 URL 分析中的应用,网络钓鱼检测有了实质性的改进,尽管存在误报等挑战,但网络钓鱼事件仍有所减少。人工智能在威胁情报方面的作用至关重要,它可自动进行数据分析以发现隐藏的威胁,并采用预测性分析来预测和缓解网络攻击。网络安全和端点保护领域的人工智能技术可加强实时监控和身份验证流程,为网络入侵提供强大的防御能力。尽管取得了这些进步,但处理大量数据和不断学习以适应新兴威胁的需求等挑战依然存在。本综述强调了人工智能在网络安全领域的重大进展、实际应用和持续挑战,突出了人工智能在强化数字防御和应对当代复杂网络威胁方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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