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Feature Selection Using Information Gain for Improved Structural-Based Alert Correlation

机译:使用信息增益进行特征选择以改善基于结构的警报关联

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摘要

Grouping and clustering alerts for intrusion detection based on the similarity of features is referred to as structurally base alert correlation and can discover a list of attack steps. Previous researchers selected different features and data sources manually based on their knowledge and experience, which lead to the less accurate identification of attack steps and inconsistent performance of clustering accuracy. Furthermore, the existing alert correlation systems deal with a huge amount of data that contains null values, incomplete information, and irrelevant features causing the analysis of the alerts to be tedious, time-consuming and error-prone. Therefore, this paper focuses on selecting accurate and significant features of alerts that are appropriate to represent the attack steps, thus, enhancing the structural-based alert correlation model. A two-tier feature selection method is proposed to obtain the significant features. The first tier aims at ranking the subset of features based on high information gain entropy in decreasing order. The‏ second tier extends additional features with a better discriminative ability than the initially ranked features. Performance analysis results show the significance of the selected features in terms of the clustering accuracy using 2000 DARPA intrusion detection scenario-specific dataset.
机译:基于功能的相似性对警报进行分组和聚类以进行入侵检测被称为基于结构的警报关联,并且可以发现攻击步骤列表。以前的研究人员根据他们的知识和经验,手动选择了不同的功能和数据源,这导致攻击步骤的识别不太准确,并且聚类精度的表现也不一致。此外,现有的警报关联系统处理的大量数据包含空值,不完整的信息和不相关的功能,从而导致警报分析繁琐,耗时且容易出错。因此,本文着重于选择适合于表示攻击步骤的警报的准确而重要的特征,从而增强基于结构的警报关联模型。提出了一种两层特征选择方法来获得重要特征。第一层旨在基于高信息增益熵以降序对特征的子集进行排名。第二层扩展了具有比最初排名的功能更好的判别能力的其他功能。性能分析结果显示了使用2000 DARPA入侵检测场景特定的数据集在聚类精度方面所选功能的重要性。

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