基于动态BIN算法的卡方法异常检测系统

S. Oshima, Yusuke Ichimura, T. Nakashima, T. Sueyoshi
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引用次数: 1

摘要

提出了利用卡方检测异常攻击的统计方法。在这些研究中,使用IP地址和端口号等特征作为概率变量。目前还没有提出基于多变量的方法来提高异常检测的准确性。如果数据包数量增加,则在卡方法计算之前将这些数据包分类为bin。分类方法取决于窗口宽度、BIN个数等计算参数,以及日夜时间的分组分布。此外,还需要根据这些参数改变分类方法。在本文中,我们提出了一种动态BIN方法来对传入的数据包进行自动分类。我们还提出了基于卡方的空间分割方法(CSDM),利用多概率变量的动态BIN方法检测异常攻击。实验结果表明,以源IP地址、目的端口号和到达数据包的间隔时间偏差作为概率变量,所提出的动态BIN实现了不依赖于数据包特征和BIN数量的均等分类。此外,与传统方法相比,动态BIN机制和使用两个概率变量的CSDM方法可以改善F-measure。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Anomaly Detection System Based on Chi-Square Method with Dynamic BIN Algorithm
The statistic researches have been proposed to detect anomaly attacks using chi-square. In these researches, features such as the IP address and the port number are used as the probabilistic variables. The method based on multiple variables has not been proposed to aim to improve the accuracy of anomaly detection. If the number of packets increase, these packets are classified into BINs before the calculation of chi-square method. The classification method depends on the calculation parameters such as the window width and the number of BIN, and the packet distribution of night and day time. In addition, the classification method should be changed based on these parameters. In this paper, we propose the dynamic BIN method to classify the incoming packets automatically. We also propose the CSDM (Chi-square-based Space Division Method) to detect anomaly attacks using the dynamic BIN methods with multiple probabilistic variables. As the results of experiments using the source IP address, the destination port number, and the interval time deviation of arriving packets as the probabilistic variables, the proposed dynamic BIN realized the equal classification, which does not depends on the features of packets and the number of BIN. In addition, the dynamic BIN mechanism and CSDM method using two probabilistic variables could improve F-measure compared to the conventional method.
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