大数据分析在提高网络安全事件响应敏捷性中的作用

Ayesha Naseer, A. M. Siddiqui
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引用次数: 0

摘要

业务运营的持续自动化使企业面临比以往任何时候都更大的网络攻击风险。企业聘请事件响应团队来识别、管理和消除网络安全攻击,并及时有效地恢复业务运营。本文认为,为了有效应对网络安全攻击,企业应该在事件响应方法中建立敏捷性,而大数据分析在事件响应中发挥了有效的作用。基于对21位专家的深度访谈,我们构建了一个框架,从人工分析、基础分析和高级分析三个阶段来解释大数据分析在事件响应方法中的显著特征和作用。通过在更高的分析阶段实践大数据分析,将灵活、创新和快速的敏捷特性灌输到事件响应方法中。结果表明,大数据分析的关键特征首先可以用来评估现有的分析能力,其次可以作为辅助工具来增强事件响应方法能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effect of Big Data Analytics in Enhancing Agility in Cybersecurity Incident Response
The ongoing automation of business operations is putting enterprises at risk of cyber attacks more than ever before. Incident response teams are employed by the enterprises for the identification, management, and elimination of cybersecurity attacks along with for the recovery of business operations timely and effectively. In this paper, we argue that to effectively react to the cybersecurity attacks enterprises should build agility in their incident response method and big data analytics performs an effective role in developing agility in incident response. Grounded on twenty-one in depth expert interviews, we develop a framework that explains the salient features and effect of big data analytics in the incident response method at three stages, i.e., manual analysis, basic analysis, and advanced analysis. The agile properties of flexibility, innovation and swiftness are instilled in the incident response method by practicing big data analytics at higher stages of analysis. The results informed that the key features of big data analytics can be firstly utilize to estimate the existing analytical capability and secondly as an assisting tool to enhance incident response method capability.
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