Threat Detection and Response Using AI and NLP in Cybersecurity

Dr. Walaa Saber Ismail
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Abstract

Introduction: In an age of rapid technical innovation and a growing digital world, protecting sensitive data from cyberattacks is crucial. The dynamic and complicated nature of these attacks requires novel cybersecurity solutions. Methods: This study analyses how Artificial Intelligence (AI) and Natural Language Processing (NLP) strengthen cybersecurity. The qualitative research approach is followed to gather data through a literature review of relevant scholarly articles and conduct interviews with cybersecurity specialists. Results: Recent AI advances have greatly enhanced the detection of anomalous patterns and behaviors in huge datasets, a key threat identification tool. NLP has also excelled at detecting malevolent intent in textual data, such as phishing efforts. AI and NLP enable adaptive security policies, enabling agile responses to evolving security issues. Expert interviews confirm that AI and NLP reduce false positives, improve threat intelligence, streamline network security setups, and improve compliance checks. These technologies enable responsive security policies, which give a strategic edge against developing security threats. AI and NLP's predictive skills could revolutionize cybersecurity by preventing threats. Conclusion: This study shows that AI and NLP have improved cybersecurity threat detection, automated incident response, and adaptive security policies. Overcoming threat detection, aggressive attacks and data privacy issues is essential to properly leveraging these advances and strengthening cyber resilience in a changing digital landscape.
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在网络安全中使用人工智能和 NLP 进行威胁检测和响应
导言:在技术快速创新和数字世界不断发展的时代,保护敏感数据免受网络攻击至关重要。这些攻击的动态性和复杂性要求采用新颖的网络安全解决方案。方法:本研究分析了人工智能(AI)和自然语言处理(NLP)如何加强网络安全。本研究采用定性研究方法,通过对相关学术文章进行文献综述和对网络安全专家进行访谈来收集数据。研究结果人工智能的最新进展大大提高了对海量数据集中异常模式和行为的检测能力,这是一种关键的威胁识别工具。NLP 在检测文本数据(如网络钓鱼行为)中的恶意意图方面也表现出色。人工智能和 NLP 可实现自适应安全策略,从而灵活应对不断变化的安全问题。专家访谈证实,人工智能和 NLP 可以减少误报,提高威胁情报能力,简化网络安全设置,改进合规性检查。这些技术可实现反应灵敏的安全策略,从而在应对不断发展的安全威胁时获得战略优势。人工智能和 NLP 的预测技能可以预防威胁,从而彻底改变网络安全。结论本研究表明,人工智能和 NLP 已经改进了网络安全威胁检测、自动事件响应和自适应安全策略。要在不断变化的数字环境中正确利用这些进步并加强网络复原力,克服威胁检测、侵略性攻击和数据隐私问题至关重要。
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来源期刊
Journal of Internet Services and Information Security
Journal of Internet Services and Information Security Computer Science-Computer Science (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
8 weeks
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