Real detection intrusion using supervised and unsupervised learning

Nouria Harbi, E. Bahri
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引用次数: 6

Abstract

Advances in software and networking technologies have nowadays brought about innumerable benefits to both individuals and organizations. Along with technological explosions, there ironically exist numerous potential cyber-security breaches, thus advocating attackers to devise hazardous intrusion tactics against vulnerable information systems. Such security-related concerns have motivated many researchers to propose various solutions to face the continuous growth of cyber threats during the past decade. Among many existing IDS methodologies, data mining has brought a remarkable success in intrusion detection. However, data mining approaches for intrusion detection have still confronted numerous challenges ranging from data collecting and feature processing to the appropriate choice of learning methods and parametric thresholds. Hence, designing efficient IDS's remains very tough. In this paper, we propose a new intrusion detection system by combining unsupervised and supervised learning method. Results shows the performance of this system.
使用监督和无监督学习的真实检测入侵
如今,软件和网络技术的进步给个人和组织带来了无数的好处。伴随着技术爆炸,讽刺的是,存在着许多潜在的网络安全漏洞,从而鼓励攻击者设计危险的入侵策略来攻击脆弱的信息系统。在过去的十年中,这种与安全相关的担忧促使许多研究人员提出了各种解决方案来面对不断增长的网络威胁。在现有的入侵检测方法中,数据挖掘技术在入侵检测方面取得了显著的成功。然而,用于入侵检测的数据挖掘方法仍然面临着许多挑战,从数据收集和特征处理到学习方法和参数阈值的适当选择。因此,设计高效的IDS仍然非常困难。本文提出了一种将监督学习和无监督学习相结合的入侵检测系统。实验结果表明了该系统的性能。
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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