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Predictive modeling for intrusions in communication systems using GARMA and ARMA models

机译:使用GARMA和ARMA模型对通信系统中的入侵进行预测建模

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The strength of time series modeling is generally not used in almost all current intrusion detection and prevention systems. By having time series models, system administrators will be able to better plan resource allocation and system readiness to defend against malicious activities. In this paper, we address the knowledge gap by investigating the possible inclusion of a statistical based time series modeling that can be seamlessly integrated into existing cyber defense system. Cyber-attack processes exhibit long range dependence and in order to investigate such properties a new class of Generalized Autoregressive Moving Average (GARMA) can be used. In this paper, GARMA (1,2;δ,1) model is fitted to cyber-attack data sets. Three different estimation methods are used to estimate the parameters. The Hannan-Rissanen Algorithm, Whittle Estimation Method and Maximum Likelihood Estimation methods are used to estimate the parameters of the GARMA (1,2;δ,1). Point forecasts to predict the attack rate possibly hours ahead of time also has been done and the performance of the models and estimation methods are discussed. The investigation of the case-study will confirm that by exploiting the statistical properties, it is possible to predict cyber-attacks (at least in terms of attack rate) with good accuracy. This kind of forecasting capability would provide sufficient early-warning time for defenders to adjust their defense configurations or resource allocations.
机译:通常,几乎所有当前的入侵检测和防御系统都没有使用时间序列建模的优势。通过使用时间序列模型,系统管理员将能够更好地计划资源分配和系统准备状况,以防御恶意活动。在本文中,我们通过研究可能包含的基于统计的时间序列模型来解决知识差距,该模型可以无缝集成到现有的网络防御系统中。网络攻击过程表现出长期的依赖性,为了研究此类属性,可以使用一类新的广义自回归移动平均值(GARMA)。本文将GARMA(1,2;δ,1)模型拟合到网络攻击数据集。三种不同的估计方法用于估计参数。使用Hannan-Rissanen算法,Whittle估计方法和最大似然估计方法来估计GARMA(1,2;δ,1)的参数。还进行了点预测以预测可能提前数小时的攻击率,并讨论了模型和估计方法的性能。对案例研究的调查将确认,通过利用统计属性,可以准确地预测网络攻击(至少在攻击率方面)。这种预测功能将为防御者提供足够的预警时间,以调整其防御配置或资源分配。

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