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Probabilistic Clustering Ensemble Evaluation for Intrusion Detection

机译:概率聚类集成评估的入侵检测

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摘要

Intrusion detection is the practice of examining information from computers and networks to identify cyberattacks. It is an important topic in practice, since the frequency and consequences of cyberattacks continues to increase and affect organizations. It is important for research, since many problems exist for intrusion detection systems. Intrusion detection systems monitor large volumes of data and frequently generate false positives. This results in additional effort for security analysts to review and interpret alerts. After long hours spent reviewing alerts, security analysts become fatigued and make bad decisions. There is currently no approach to intrusion detection that reduces the workload of human analysts by providing a probabilistic prediction that a computer is experiencing a cyberattack.;This research addressed this problem by estimating the probability that a computer system was being attacked, rather than alerting on individual events. This research combined concepts from cyber situation awareness by applying clustering ensembles, probability analysis, and active learning. The unique contribution of this research is that it provides a higher level of meaning for intrusion alerts than traditional approaches.;Three experiments were conducted in the course of this research to demonstrate the feasibility of these concepts. The first experiment evaluated cluster generation approaches that provided multiple perspectives of network events using unsupervised machine learning. The second experiment developed and evaluated a method for detecting anomalies from the clustering results. This experiment also determined the probability that a computer system was being attacked. Finally, the third experiment integrated active learning into the anomaly detection results and evaluated its effectiveness in improving the accuracy.;This research demonstrated that clustering ensembles with probabilistic analysis were effective for identifying normal events. Abnormal events remained uncertain and were assigned a belief. By aggregating the belief to find the probability that a computer system was under attack, the resulting probability was highly accurate for the source IP addresses and reasonably accurate for the destination IP addresses. Active learning, which simulated feedback from a human analyst, eliminated the residual error for the destination IP addresses with a low number of events that required labeling.
机译:入侵检测是一种检查计算机和网络中的信息以识别网络攻击的实践。这是实践中的一个重要主题,因为网络攻击的频率和后果持续增加并影响组织。这对于研究很重要,因为入侵检测系统存在许多问题。入侵检测系统监视大量数据,并经常产生误报。这使安全分析人员需要付出更多的努力来查看和解释警报。在花了很长时间检查警报之后,安全分析人员变得疲倦并做出了错误的决定。当前没有一种入侵检测方法可以通过提供计算机正在遭受网络攻击的概率预测来减轻人类分析人员的工作量。该研究通过估计计算机系统受到攻击的可能性而不是发出警报来解决此问题。个别事件。这项研究通过应用聚类集成,概率分析和主动学习,结合了来自网络态势感知的概念。这项研究的独特之处在于,它为入侵警报提供了比传统方法更高的含义。;在研究过程中进行了三个实验,以证明这些概念的可行性。第一个实验评估了集群生成方法,该方法使用无监督机器学习提供了网络事件的多种视角。第二个实验开发并评估了一种从聚类结果中检测异常的方法。该实验还确定了计算机系统受到攻击的可能性。最后,第三个实验将主动学习整合到异常检测结果中,并评估了其在提高准确度方面的有效性。;该研究表明,带有概率分析的聚类集成对于识别正常事件是有效的。异常事件仍然不确定,并被赋予了信念。通过汇总信念以发现计算机系统受到攻击的可能性,所得到的概率对于源IP地址是高度准确的,而对于目标IP地址则相当合理。主动学习模拟了人类分析人员的反馈,从而消除了需要标记的事件数量少的目标IP地址的残留错误。

著录项

  • 作者

    McElwee, Steven M.;

  • 作者单位

    Nova Southeastern University.;

  • 授予单位 Nova Southeastern University.;
  • 学科 Computer science.;Information technology.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 166 p.
  • 总页数 166
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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