Advancing cybersecurity and privacy with artificial intelligence: current trends and future research directions.

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers in Big Data Pub Date : 2024-12-05 eCollection Date: 2024-01-01 DOI:10.3389/fdata.2024.1497535
Krishnashree Achuthan, Sasangan Ramanathan, Sethuraman Srinivas, Raghu Raman
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Abstract

Introduction: The rapid escalation of cyber threats necessitates innovative strategies to enhance cybersecurity and privacy measures. Artificial Intelligence (AI) has emerged as a promising tool poised to enhance the effectiveness of cybersecurity strategies by offering advanced capabilities for intrusion detection, malware classification, and privacy preservation. However, this work addresses the significant lack of a comprehensive synthesis of AI's use in cybersecurity and privacy across the vast literature, aiming to identify existing gaps and guide further progress.

Methods: This study employs the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) framework for a comprehensive literature review, analyzing over 9,350 publications from 2004 to 2023. Utilizing BERTopic modeling, 14 key themes in AI-driven cybersecurity were identified. Topics were clustered and validated through a combination of algorithmic and expert-driven evaluations, focusing on semantic relationships and coherence scores.

Results: AI applications in cybersecurity are concentrated around intrusion detection, malware classification, federated learning in privacy, IoT security, UAV systems and DDoS mitigation. Emerging fields such as adversarial machine learning, blockchain and deep learning are gaining traction. Analysis reveals that AI's adaptability and scalability are critical for addressing evolving threats. Global trends indicate significant contributions from the US, India, UK, and China, highlighting geographical diversity in research priorities.

Discussion: While AI enhances cybersecurity efficacy, challenges such as computational resource demands, adversarial vulnerabilities, and ethical concerns persist. More research in trustworthy AI, standardizing AI-driven methods, legislations for robust privacy protection amongst others is emphasized. The study also highlights key current and future areas of focus, including quantum machine learning, explainable AI, integrating humanized AI and deepfakes.

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用人工智能推进网络安全和隐私:当前趋势和未来研究方向。
导言:网络威胁的快速升级需要创新战略来加强网络安全和隐私措施。人工智能(AI)已经成为一种有前途的工具,通过提供入侵检测、恶意软件分类和隐私保护的高级功能,有望提高网络安全战略的有效性。然而,这项工作解决了大量文献中人工智能在网络安全和隐私方面的使用缺乏全面综合的问题,旨在确定现有的差距并指导进一步的进展。方法:本研究采用系统评价和荟萃分析首选报告项目(PRISMA)框架进行全面的文献综述,分析了2004年至2023年的9350多篇出版物。利用BERTopic模型,确定了人工智能驱动的网络安全中的14个关键主题。通过结合算法和专家驱动的评估对主题进行聚类和验证,重点关注语义关系和连贯分数。结果:人工智能在网络安全领域的应用主要集中在入侵检测、恶意软件分类、隐私联合学习、物联网安全、无人机系统和DDoS缓解等方面。对抗性机器学习、区块链和深度学习等新兴领域正在获得越来越多的关注。分析表明,人工智能的适应性和可扩展性对于应对不断变化的威胁至关重要。全球趋势表明,美国、印度、英国和中国的贡献显著,突出了研究重点的地理多样性。讨论:虽然人工智能提高了网络安全效率,但诸如计算资源需求、对抗性漏洞和道德问题等挑战仍然存在。更多的研究值得信赖的人工智能,标准化人工智能驱动的方法,在其他方面的强大的隐私保护立法被强调。该研究还强调了当前和未来的重点领域,包括量子机器学习、可解释人工智能、集成人性化人工智能和深度造假。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
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