认知soc的兴起:关于人工智能方法的系统文献综述

Farid Binbeshr;Muhammad Imam;Mustafa Ghaleb;Mosab Hamdan;Mussadiq Abdul Rahim;Mohammad Hammoudeh
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引用次数: 0

摘要

日益复杂的网络威胁导致安全运营中心(soc)向更加智能和自适应的系统发展。本文探讨了人工智能(AI)在soc中的集成,重点介绍了它们的现状、挑战、机遇以及相对于传统方法的优势。我们解决了三个关键问题:(1)当前soc中的AI方法是什么?(2)这些方法存在哪些挑战和机遇?(3)与传统方法相比,AI模型在SOC环境中提供了哪些优势?我们使用结构化方法分析了38项研究,包括数据库搜索、质量检查和数据提取。我们的研究结果表明,机器学习(ML)技术主导着SOC研究,并有多方法人工智能方法的趋势。我们将这些分类为ML、自然语言处理、多方法等,形成了soc中AI应用的详细分类。挑战包括数据质量、模型可解释性、遗留系统集成以及不断适应的需求。机会包括任务自动化、增强的威胁检测、实时分析和自适应学习。与传统方法相比,人工智能驱动的soc具有更高的准确性、更少的误报、更大的可扩展性和预测能力。这篇综述定义了认知soc,强调了它们模仿人类过程的能力。我们为SOC设计人员和管理人员提供实用的见解,帮助他们实施人工智能来改善安全运营。最后,我们提出了可解释AI、人类AI协作和soc隐私保护AI的未来研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Rise of Cognitive SOCs: A Systematic Literature Review on AI Approaches
The increasing sophistication of cyber threats has led to the evolution of Security Operations Centers (SOCs) towards more intelligent and adaptive systems. This review explores the integration of Artificial Intelligence (AI) in SOCs, focusing on their current state, challenges, opportunities, and advantages over traditional methods. We address three key questions: (1) What are the current AI approaches in SOCs? (2) What challenges and opportunities exist with these approaches? (3) What benefits do AI models offer in SOC environments compared to traditional methods? We analyzed 38 studies using a structured methodology involving database searches, quality checks, and data extraction. Our findings show that Machine Learning (ML) techniques dominate SOC research, with a trend towards multi-approach AI methods. We classified these into ML, Natural Language Processing, multi-approach, and others, forming a detailed taxonomy of AI applications in SOCs. Challenges include data quality, model interpretability, legacy system integration, and the need for constant adaptation. Opportunities involve task automation, enhanced threat detection, real-time analysis, and adaptive learning. AI-driven SOCs show better accuracy, reduced false positives, greater scalability, and predictive capabilities than traditional approaches. This review defines Cognitive SOCs, emphasizing their ability to mimic human-like processes. We offer practical insights for SOC designers and managers on implementing AI to improve security operations. Finally, we suggest future research directions in explainable AI, human-AI collaboration, and privacy-preserving AI for SOCs.
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