首页> 外文会议>International Conference on Image Analysis and Processing(ICIAP 2005); 20050906-08; Cagliari(IT) >Combining Genetic-Based Misuse and Anomaly Detection for Reliably Detecting Intrusions in Computer Networks
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Combining Genetic-Based Misuse and Anomaly Detection for Reliably Detecting Intrusions in Computer Networks

机译:结合基于遗传的滥用和异常检测来可靠地检测计算机网络中的入侵

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摘要

When addressing the problem of detecting malicious activities within network traffic, one of the main concerns is the reliability of the packet classification. Furthermore, a system able to detect the so-called zero-day attacks is desirable. Pattern recognition techniques have proven their generalization ability in detecting intrusions, and systems based on multiple classifiers can enforce the detection reliability by combining and correlating the results obtained by different classifiers. In this paper we present a system exploiting genetic algorithms for deploying both a misuse-based and an anomaly-based classifier. Hence, by suitably combining the results obtained by means of such techniques, we aim at attaining a highly reliable classification system, still with a significant degree of new attack prediction ability. In order to improve classification reliability, we introduce the concept of rejection: instead of emitting an unreliable verdict, an ambiguous packet can be logged for further analysis. Tests of the proposed system on a standard database for benchmarking intrusion detection systems are also reported.
机译:在解决检测网络流量内的恶意活动的问题时,主要关注的问题之一是数据包分类的可靠性。此外,需要一种能够检测所谓的零日攻击的系统。模式识别技术已经证明了其在检测入侵方面的通用能力,基于多个分类器的系统可以通过组合和关联不同分类器获得的结果来增强检测可靠性。在本文中,我们提出了一种利用遗传算法来部署基于误用和基于异常的分类器的系统。因此,通过适当地组合通过这种技术获得的结果,我们旨在获得一种高度可靠的分类系统,同时仍具有相当程度的新攻击预测能力。为了提高分类的可靠性,我们引入了拒绝的概念:代替发出不可靠的结论,可以记录一个模棱两可的数据包以进行进一步分析。还报告了在基准入侵检测系统基准数据库上对建议的系统进行的测试。

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