二维入侵检测系统:一种新的特征选择技术

Abid Saber, Moncef Abbas, B. Fergani
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引用次数: 1

摘要

网络攻击的迅速增加和扩大需要开发新的高质量工具来减少、打击并最终阻止其风险。在此背景下,我们引入了入侵防御系统(IPS)。它是一种扩展的IDS解决方案网络安全技术,其特点是增加了阻止威胁和检测漏洞利用的能力。与前代产品不同,IPS作为内联安全组件,通过分析和自动处理所有进入网络的流量,主动处理。毫无疑问,速度和效率是IPS的必要条件,以避免降低网络性能。一方面,基于签名的检测和基于统计异常的检测是两种主要的检测方法机制,它们负责在提取统计特征以表征网络流量时发现漏洞。因此,分类器的计算成本将会过大。另一方面,特征选择问题是数据科学中一个高度复杂的NP-hard问题,是减少特征和提高整体分类精度的关键组成部分。本文提出了一种新的入侵检测系统。它是一个双作用系统,具有基于元分类器的特征选择,以及通过交叉验证进行堆叠的集成学习元分类器,以防止过拟合。因此,为每种类型的攻击选择更好的信息特征子集,而不是所有攻击的共同特征。最后,本工作通过多次实验证明,我们提出的模型不仅达到了高的检测率,显著减少了误报,而且加快了学习和测试过程,从而直接有助于在线模式的整体工作能力和可扩展性。
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Two-dimensional Intrusion Detection System: A New Feature Selection Technique
The rapid increase and expansion of cyber-attacks requires the development of new quality tools to reduce, combat, and eventually stop their risks. In this context, an Intrusion Prevention Systems (IPS) is introduced. It is an extended IDS solutions network security technology characterized by adding the ability to block threats and detect vulnerabilities exploits. Unlike its predecessor, the IPS is placed as an inline security component where it actively processes via analyzing and taking automated actions on all traffic flows that enter the network. Needless to say, speed and efficiency are a necessity in the IPS to avoid degrading network performance. On one hand, signature-based detection and statistical anomaly-based detection, two dominant detection methods mechanisms, are responsible for finding exploits whenever statistical features are extracted to characterize network traffic flows. The computation cost of the classifier, therefore, will be overlarge. On the other hand, the feature selection problem, a critical component in reducing features and improving overall classification accuracy, is about a highly complex NP-hard problem in a Data science. In this paper, a novel intrusion detection system is proposed. It is a double-action system with meta-classifier based feature selection as well as an ensemble learning meta-classifier for stacking via cross-validation to prevent overfitting. Therefore, a better subset of informative features for each type of attacks was selected rather than the features common to all attacks. Finally, this work, through the several experiments, demonstrates that our proposed model not only reaches high detection rates and significantly reduces false alarms, but also accelerates the learning and the testing process thereby directly contributing to the overall ability to work in online mode and scalability.
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