基于小波分析的网络非法行为检测

Pavlo Hrynchenko
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引用次数: 0

摘要

信号处理技术被用于分析和检测网络异常,因为它们能够检测到新的和未知的入侵。将小波逼近与系统辨识理论相结合,提出了一种用于网络异常检测的网络信号建模方法。为了表征网络流量的行为,提供了15个功能,这些功能用作系统内的输入信号。同时,假设根据审计数据,通过检查系统运行的异常模式,可以检测到网络内的安全违规行为。 尽管机器学习方法在检测网络异常方面取得了显著的成果,但由于训练数据和测试数据的行为存在差异,它们仍然面临着使用实现算法的困难,这反过来又导致算法的低效性能。由于大量误报,算法检测以前未知类型的攻击的局限性加剧了这种影响。 本文提出了一种利用小波分析对网络信号进行建模的新方法,用于网络异常检测。具体而言,该方法的总体架构由三个部分组成:特征分析、基于小波近似的正常网络流量建模和使用ARX模型的预测、入侵或非入侵决策 使用DARPA入侵检测数据集对结果进行评估,该数据集对数据集中的入侵进行了全面分析。评估结果表明,该方法对实例和攻击类型都提供了高水平的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Unauthorized Actions in Networks Using Wavelet Analysis
Signal processing techniques are used to analyze and detect network anomalies because of their ability to detect new and unknown intrusions. The paper proposes a method of modeling network signals for the detection of network anomalies, which combines wavelet approximation and the theory of system identification. To characterize the behavior of network traffic, fifteen functions are provided, which are used as input signals within the system. At the same time, it is assumed that security violations within the network can be detected by checking abnormal patterns of system functioning according to audit data. Despite the fact that machine learning methods have achieved significant results in detecting network anomalies, they still face the difficulty of using the implemented algorithms, in the presence of differences in the behavior of the training data and test data, which in turn leads to inefficient performance of the algorithms. This effect is exacerbated by the limitation of algorithms to detect previously unknown types of attacks due to the large number of false positives. The paper develops a new method of modeling network signals for detecting anomalies in networks using wavelet analysis. In particular, the general architecture of the approach consists of three components: feature analysis, modeling of normal network traffic based on wavelet approximation and prediction using ARX model, intrusion or non-intrusion decision making The result is evaluated using the DARPA intrusion detection dataset, which performs a comprehensive analysis of the intrusions in the dataset. Evaluation results show that this approach provides a high level of detection of both instances and types of attacks.
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