网络攻击自动检测与可视化研究

F. Alhaidari, Rawan Mushref Tammas, Dana Saeed Alghamdi, Reem Aied Alrashedi, Nora Adnan Althani, S. Alsaidan, Malak Alfosail, Rachid Zagrouba, Hussain Alattas
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引用次数: 0

摘要

随着技术的发展,网络攻击正在大量增加。因此,公司和组织有义务实现高安全性措施来预防、减轻和响应此类攻击。如果一家公司面临网络攻击,它应该通过事件后的取证分析阶段。这个阶段是调查过程的重要组成部分,因为它提供了关于攻击如何进行以及漏洞在哪里的有价值的信息,允许安全团队修补它并学习如何防御未来的攻击。因此,本文旨在讨论网络流量的被动分析,并回顾当前的网络流量分析工具和技术,根据预定义的标准对其进行总结,分析和比较,以找到文献缺口以解决它。分析后发现的差距是,就检测攻击的存在以及可视化流量流而言,没有工具足以满足网络流量被动分析的所有目的。
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A study on Automated Cyberattacks Detection and Visualization
With technology evolving, cyberattacks are increasing massively. Therefore, companies and organizations are obliged to implement high-security measures to prevent, mitigate, and respond to such attacks. If a company faces a cyberattack, it should pass through the post-incident forensics analysis phase. This phase is a significant part of the investigation process since it provides valuable information on how the attack was conducted and where the vulnerability was, allowing the security team to patch it and learn how to defend against future attacks. For that reason, this paper aims to discuss a passive analysis of network traffic and review the current network traffic analysis tools and techniques, summarize, analyze, and compare them based on pre-defined criteria to find the literature gap to address it. The gap found after the analysis is that no tool suffices for all purposes of network traffic passive analysis, in terms of both detecting the presence of attacks as well as to visualizing the traffic flow.
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