Long-Memory Dependence Statistical Models for DDoS Attacks Detection

T. Andrysiak, Ł. Saganowski, M. Maszewski, Piotr Grad
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引用次数: 1

Abstract

Abstract DDoS attacks detection method based on modelling the variability with the use of conditional average and variance in examined time series is proposed in this article. Variability predictions of the analyzed network traffic are realized by estimated statistical models with long-memory dependence ARFIMA, Adaptive ARFIMA, FIGARCH and Adaptive FIGARCH. We propose simple parameter estimation models with the use of maximum likelihood function. Selection of sparingly parameterized form of the models is realized by means of information criteria representing a compromise between brevity of representation and the extent of the prediction error. In the described method we propose using statistical relations between the forecasted and analyzed network traffic in order to detect abnormal behavior possibly being a result of a network attack. Performed experiments confirmed effectiveness of the analyzed method and cogency of the statistical models.
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基于长内存依赖性的DDoS攻击检测统计模型
摘要本文提出了一种基于条件平均和方差对被检测时间序列的可变性建模的DDoS攻击检测方法。通过长记忆依赖性ARFIMA、自适应ARFIMA、FIGARCH和自适应FIGARCH估计统计模型实现了网络流量的变异性预测。我们提出了使用极大似然函数的简单参数估计模型。模型的参数化形式的选择是通过信息标准来实现的,这些信息标准代表了表示的简洁性和预测误差的程度之间的折衷。在所描述的方法中,我们提出利用预测和分析的网络流量之间的统计关系来检测可能是网络攻击的结果的异常行为。通过实验验证了分析方法的有效性和统计模型的正确性。
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