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An Efficient Anomaly Detection Algorithm for Vector-Based Intrusion Detection Systems

机译:基于向量的入侵检测系统的高效异常检测算法

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This paper proposes a new algorithm that improves the efficiency of the anomaly detection stage of a vector-based intrusion detection scheme. In general, intrusion detection schemes are based on the hypothesis that normal system/user behaviors are consistent and can be characterized by some behavior profiles such that deviations from the profiles are considered abnormal. In complicated computing environments, users may exhibit complicated usage patterns that the user profiles have to be established using sophisticated classification methods such as vector quantization (VQ) technique. However, anomaly detection based on the data set in a high dimension space is inefficient. In this paper we focus on the design of an algorithm that uses principal component analysis (PCA) to improve the anomaly detection efficiency. The main contribution of this research is to demonstrate how the efficiency of the anomaly detection can be raised while the effectiveness of the detection in terms of low false alarm rate and high detection rate can be maintained.
机译:本文提出了一种新的算法,可以提高基于矢量的入侵检测方案的异常检测阶段的效率。通常,入侵检测方案基于以下假设:正常系统/用户行为是一致的,并且可以通过某些行为配置文件进行特征化,从而将与配置文件的偏差视为异常。在复杂的计算环境中,用户可能会表现出复杂的使用模式,必须使用复杂的分类方法(例如矢量量化(VQ)技术)来建立用户配置文件。但是,基于高维空间中的数据集的异常检测效率很低。在本文中,我们专注于使用主成分分析(PCA)来提高异常检测效率的算法的设计。这项研究的主要贡献是证明如何在提高错误检测率和高检测率的同时保持高效率的同时提高异常检测的效率。

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