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Ensemble Classifiers for Network Intrusion Detection Using a Novel Network Attack Dataset ?

机译:使用新颖的网络攻击数据集进行网络入侵检测的集合分类器?

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Due to the extensive use of computer networks, new risks have arisen, and improving the speed and accuracy of security mechanisms has become a critical need. Although new security tools have been developed, the fast growth of malicious activities continues to be a pressing issue that creates severe threats to network security. Classical security tools such as firewalls are used as a first-line defense against security problems. However, firewalls do not entirely or perfectly eliminate intrusions. Thus, network administrators rely heavily on intrusion detection systems (IDSs) to detect such network intrusion activities. Machine learning (ML) is a practical approach to intrusion detection that, based on data, learns how to differentiate between abnormal and regular traffic. This paper provides a comprehensive analysis of some existing ML classifiers for identifying intrusions in network traffic. It also produces a new reliable dataset called GTCS (Game Theory and Cyber Security) that matches real-world criteria and can be used to assess the performance of the ML classifiers in a detailed experimental evaluation. Finally, the paper proposes an ensemble and adaptive classifier model composed of multiple classifiers with different learning paradigms to address the issue of the accuracy and false alarm rate in IDSs. Our classifiers show high precision and recall rates and use a comprehensive set of features compared to previous work.
机译:由于计算机网络的广泛使用,出现了新的风险,提高了安全机制的速度和准确性已成为一个关键需求。虽然已经开发出新的安全工具,但恶意活动的快速增长仍然是一个迫切的问题,为网络安全创造了严重的威胁。防火墙等古典安全工具被用作防止安全问题的一线防御。然而,防火墙完全或完全消除入侵。因此,网络管理员严重依赖入侵检测系统(IDS)来检测这种网络入侵活动。机器学习(ML)是入侵检测的实用方法,基于数据,了解如何区分异常和常规流量。本文对某些现有ML分类器进行了全面的分析,用于识别网络流量中的入侵。它还产生了一种名为GTCS(游戏理论和网络安全)的新的可靠数据集,与真实世界标准相匹配,并且可用于评估ML分类器在详细的实验评估中的性能。最后,本文提出由具有不同学习范例的多个分类器组成的集合和自适应分类器模型,以解决IDS中准确性和误报率的问题。我们的分类器显示出高精度和召回率,与以前的工作相比,使用全面的功能。

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