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Comprehensive analysis and recommendation of feature evaluation measures for intrusion detection

机译:入侵检测特征评估措施的综合分析与建议

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摘要

The revolutionary advances in network technologies have spearheaded the design of advanced cyberattacks to surpass traditional security defense with dreadful consequences. Recently, Intrusion Detection System (IDS) is considered as a pivotal element in network security infrastructures to achieve solid line of protection against cyberattacks. The prime challenges presented to IDS are curse of high dimensionality and class imbalance that tends to increase the detection time and degrade the efficiency of IDS. As a result, feature selection plays an important role in enabling to identify the most significant features for intrusion detection. Although, several feature evaluation measures are being proposed for feature selection in literature, there is no consensus on which measures are best for intrusion detection. Therein, this work aims at recommending the most appropriate feature evaluation measure for building an efficient IDS. In this direction, four filter-based feature evaluation measures that stem from different theories such as Consistency, Correlation, Information and Distance are investigated for their potential implications in enhancing the detection ability of IDS model for different classes of attacks. Along with this, the influence of the selected features on classification accuracy of an IDS model is analyzed using four different categories of classifiers namely, K-nearest neighbors (KNN), Random Forest (RF), Support Vector Machine (SVM) and Deep Belief Network (DBN). Finally, a two-step statistical significance test is conducted on the experimental results to determine which feature evaluation measure contributes statistically significant difference in IDS performance. All the experimental comparisons are performed on two benchmark intrusion detection datasets, NSL-KDD and UNSW-NB15. In these experiments, consistency measure has best influenced the IDS model in improving the detection ability with regard to detection rate (DR), false alarm rate (FAR), kappa statistics (KS) and identifying the most significant features for intrusion detection. Also, from the analysis results, it is revealed that RF is the ideal classifier to be used in conjunction with any of these four feature evaluation measures to achieve better detection accuracy than others. From the statistical results, we recommend the use of consistency measure for designing an efficient IDS in terms of DR and FAR.
机译:网络技术的革命性进步使得先进的网络图案设计为具有可怕后果的传统安全防御。最近,入侵检测系统(IDS)被认为是网络安全基础设施中的关键元素,以实现针对Cyber​​Actacks的实线保护线。向IDS提出的主要挑战是高度维度和类别不平衡的诅咒,往往会增加检测时间并降低ID的效率。结果,特征选择在启用中识别用于入侵检测的最重要特征方面发挥着重要作用。虽然,在文献中提出了几种特征评估措施,但没有共识,措施最适合入侵检测。其中,这项工作旨在建议建立高效ID的最合适的特征评估措施。在此方向上,研究了四种基于滤波器的特征评估措施,其源于诸如一致性,相关性,信息和距离之类的不同理论,以便它们对增强不同类别攻击的IDS模型的检测能力方面的潜在影响。除此之外,使用四个不同类别的分类器分析所选特征对IDS模型分类精度的影响,即K-Colless邻居(KNN),随机林(RF),支持向量机(SVM)和深度信念网络(DBN)。最后,对实验结果进行了两步统计显着性测试,以确定哪种特征评估措施有助于IDS性能的统计上显着差异。所有实验比较都是对两个基准入侵检测数据集,NSL-KDD和UNSW-NB15进行的。在这些实验中,一致性测量最佳地影响了IDS模型在提高关于检测率(DR),误报率(遥控器),κ统计(KS)方面的检测能力,并识别用于入侵检测的最重要特征。此外,从分析结果中,揭示RF是与这些四个特征评估措施中的任何一个结合使用的理想分类器,以实现比其他特征更好的检测精度。从统计结果来看,我们建议使用一致性措施在博士和远处设计有效的ID。

著录项

  • 期刊名称 Heliyon
  • 作者单位
  • 年(卷),期 2020(6),7
  • 年度 2020
  • 页码 e04262
  • 总页数 13
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:计算机科学;网络安全;入侵检测;深度信仰网络;特征选择;距离;相关;一致性;信息增益;检测引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;响应引擎;
  • 入库时间 2022-08-21 12:16:12

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