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An Intrusion Detection Algorithm Based on Feature Graph

机译:一种基于特征图的入侵检测算法

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摘要

With the development of Information technology and the popularization of Internet, whenever and wherever possible, people can connect to the Internet optionally. Meanwhile, the security of network traffic is threatened by various of online malicious behaviors. The aim of an intrusion detection system (IDS) is to detect the network behaviors which are diverse and malicious. Since a conventional firewall cannot detect most of the malicious behaviors, such as malicious network traffic or computer abuse, some advanced learning methods are introduced and integrated with intrusion detection approaches in order to improve the performance of detection approaches. However, there are very few related studies focusing on both the effective detection for attacks and the representation for malicious behaviors with graph. In this paper, a novel intrusion detection approach IDBFG (Intrusion Detection Based on Feature Graph) is proposed which first filters normal connections with grid partitions, and then records the patterns of various attacks with a novel graph structure, and the behaviors in accordance with the patterns in graph are detected as intrusion behaviors. The experimental results on KDD-Cup 99 dataset show that IDBFG performs better than SVM (Supprot Vector Machines) and Decision Tree which are trained and tested in original feature space in terms of detection rates, false alarm rates and run time.
机译:随着信息技术的发展和互联网的推广,无论何时可以,人们都可以选择连接到互联网。同时,网络流量的安全受到各种在线恶意行为的威胁。入侵检测系统(IDS)的目的是检测多样化和恶意的网络行为。由于传统防火墙无法检测到大多数恶意行为,例如恶意网络流量或计算机滥用,因此引入了一些高级学习方法,并与入侵检测方法集成,以提高检测方法的性能。然而,很少有相关的研究重点是对攻击的有效检测和具有图表的恶意行为的表现。在本文中,提出了一种新颖的入侵检测方法IDBFG(基于特征图的入侵检测),首先滤除与网格分区的正常连接,然后用新颖的曲线结构记录各种攻击的模式,以及根据的行为图中的图案被检测为入侵行为。 KDD-CUP 99数据集的实验结果表明,IDBFG在检测速率,误报率和运行时在原始特征空间中培训和测试,该决策树更好地执行和在原始特征空间中进行培训和测试。

著录项

  • 来源
    《Computers, Materials & Continua》 |2019年第1期|255-273|共19页
  • 作者单位

    School of Electronics and Information Engineering Taizhou University Taizhou 318000 China;

    Cyberspace Institute of Advanced Technology Guangzhou University Guangzhou 510006 China;

    Cyberspace Institute of Advanced Technology Guangzhou University Guangzhou 510006 China;

    Cyberspace Institute of Advanced Technology Guangzhou University Guangzhou 510006 China;

    Indiana University Network Science Institute Bloomington Indiana 47408 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Intrusion detection; machine learning; ids; feature graph; grid partitions;

    机译:入侵检测;机器学习;ids;特征图;网格分区;

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