An Easy-to-use Framework to Build and Operate AI-based Intrusion Detection for In-situ Monitoring

Ikje Choi, Jun Lee, Taewoong Kwon, Kyuil Kim, Yoonsu Choi, Jungsuk Song
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引用次数: 3

Abstract

With a paradigm shift to untact environments, security threats on the network also have been significantly increasing all over the world. To monitor and detect intrusion attempts under enormous network traffic, Security Operation Center (SOC) essentially exploits various security devices. Above all, Network Intrusion Detection System (NIDS) has been operated in public/private sectors as a spearhead to fight against cyber threats. In particular, state-of-the-art technologies, especially ML and AI, have been being studied to achieve quick and accurate intrusion detection. Despite much effort to guarantee a secure network, however, SOCs are still struggling for overcoming various types of threats as well as attacks of similar form with benign traffic. Even though the advanced techniques may find out a complex and unknown attack, operating and managing them in real-world situations cause counterproductively more pressure to agents in the SOC. In order to solve these difficulties, this study introduces an easy-to-use framework to build intrusion detection models based on AI techniques, as well as to operate them depending on a situation using a graphical user interface. The framework supports generating various types of AI- and ML-based intrusion detection models with optimized parameters by only a few steps. Furthermore, an interactive graphical interface makes it easier to manage detection models according to different threat situations. Finally, the performance of models made by the framework is evaluated in terms of accuracy, especially under the real-world SOC environment with live network traffic.
一种易于使用的基于人工智能的现场监控入侵检测构建和操作框架
随着向非接触环境的范式转变,网络上的安全威胁也在全球范围内显著增加。为了监控和检测巨大网络流量下的入侵企图,SOC (Security Operation Center)本质上利用了各种安全设备。最重要的是,网络入侵检测系统(NIDS)作为对抗网络威胁的先锋,已在公营/私营机构运作。特别是,人们一直在研究最先进的技术,特别是机器学习和人工智能,以实现快速准确的入侵检测。尽管付出了很多努力来保证网络的安全,但是soc仍然在努力克服各种类型的威胁以及类似形式的良性流量攻击。尽管先进的技术可能会发现复杂和未知的攻击,但在现实世界中操作和管理它们会给SOC中的代理带来适得其反的压力。为了解决这些困难,本研究引入了一个易于使用的框架来构建基于人工智能技术的入侵检测模型,并使用图形用户界面根据情况操作它们。该框架支持通过几个步骤生成具有优化参数的各种类型的基于AI和ml的入侵检测模型。此外,交互式图形界面使得根据不同的威胁情况更容易管理检测模型。最后,从准确性方面评估了由框架构建的模型的性能,特别是在具有实时网络流量的真实SOC环境下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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