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Evaluating host-based anomaly detection systems: Application of the one-class SVM algorithm to ADFA-LD

机译:评估基于主机的异常检测系统:一类SVM算法在ADFA-LD中的应用

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ADFA-LD is a recently released data set for evaluating host-based anomaly detection systems, aiming to substitute the existing benchmark data sets which have failed to reflect the characteristics of modern computer systems. In a previous work, we had attempted to evaluate ADFA-LD with a highly efficient frequency model but the performance is inferior. In this paper, we focus on the other typical technical category that detects anomalies with a short sequence model. In collaboration with the one-class SVM algorithm, a novel anomaly detection system is proposed for ADFA-LD. The numerical experiments demonstrate that it can not only achieve a satisfactory performance, but also reduce the computational cost largely.
机译:ADFA-LD是最近发布的用于评估基于主机的异常检测系统的数据集,旨在替代无法反映现代计算机系统特征的现有基准数据集。在先前的工作中,我们尝试使用高效的频率模型评估ADFA-LD,但性能较差。在本文中,我们专注于使用短序列模型检测异常的其他典型技术类别。结合一类SVM算法,提出了一种针对ADFA-LD的新型异常检测系统。数值实验表明,该算法不仅可以达到满意的性能,而且可以大大降低计算量。

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