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Contribution of Four Class Labeled Attributes of Kdd Dataset on Detection and False Alarm Rate for Intrusion Detection System

机译:Kdd数据集的四类标记属性对入侵检测系统的检测和虚警率的贡献

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KDD Cup dataset has been key in studying the Intrusion Detection Systems whose attributes can be labeled in four classes. The objective of this study is to assimilate the contribution of attributes from each of these four classes in achieving high detection rate and low false alarm rate. Machine learning algorithms are employed to study the classification of KDD Cup dataset in two classes of normal and anomalous data. Different variants of KDD Cup dataset are created with respect to four labels and each of these variants is simulated on a set of same algorithms. The results derived from the study of each data variant is analyzed and compared to derive a broad conclusion. This pragmatic study compiles the findings for detection rate and false alarm rate in intrusion detection systems with respect to data under each of the four labels. The study contributes to the estimation of desired attributes for achieving maximum detection rate and minimum false alarm rate simultaneously while adhering to the earlier findings signifying the obligatory connection of basic labeled attributes in intrusion detection. The study can help reduce the data complexity while identifying major attributes of a particular label that are significant in getting high detection rate and low false alarm rate at the same time.
机译:KDD Cup数据集一直是研究入侵检测系统的关键,入侵检测系统的属性可以分为四个类别。这项研究的目的是同化来自这四个类别的属性在实现高检测率和低虚警率方面的贡献。机器学习算法被用来研究KDD Cup数据集在正常和异常数据两类中的分类。针对四个标签创建了KDD Cup数据集的不同变体,并且在一组相同的算法上模拟了每个变体。分析和比较从每个数据变量的研究得出的结果,以得出广泛的结论。这项务实的研究针对四个标签中每个标签下的数据,汇总了入侵检测系统中检测率和误报率的发现。该研究有助于估计所需属性,以便同时实现最大检测率和最小误报率,同时坚持早期发现,表明入侵检测中必须将基本标记属性连接起来。这项研究可以帮助降低数据的复杂性,同时识别出特定标签的主要属性,这些属性对于同时获得较高的检测率和较低的误报率具有重要意义。

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