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首页> 外文期刊>Journal of network and computer applications >Network anomaly detection based on logistic regression of nonlinear chaotic invariants
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Network anomaly detection based on logistic regression of nonlinear chaotic invariants

机译:基于非线性混沌不变量逻辑回归的网络异常检测

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摘要

Network anomaly detection has the essential goal of reliably identifying malicious activities within traffic observations collected at specific monitoring points, in order to raise alarms and timely trigger specific reactions and countermeasures. This, ideally, should be done also in presence of previously unknown phenomena, also known as zero-day attacks. However, distinguishing anomalous events due to attacks from normal spikes or sharp variations in traffic flows can become a classic "finding a needle in a haystack" problem, due to the very complex and unpredictable nature of Internet traffic, which is extremely affected by randomness and background noise effects. To face this challenge we leveraged machine learning for developing a novel network anomaly detection solution, based on the exploitation of nonlinear invariant properties of the Internet traffic. These properties, by capturing its chaotic and fractal features, are better suited to represent the more intrinsic and discriminative dynamics within an inductively learned model to be used for effectively classifying, through logistic regression, previously unseen traffic aggregates or individual flows into "normal" or "anomalous" ones. The results of the performance evaluation, obtained within a standard and reproducible experimental validation framework, show that the approach is able to effectively isolate very different kinds of volumetric Denial of Service attacks within the context of complex mixes of traffic flows, with really satisfactory accuracy and precision.
机译:网络异常检测的基本目标是在特定监视点收集的流量观察中可靠地识别恶意活动,以发出警报并及时触发特定的反应和对策。理想情况下,也应该在存在以前未知的现象(也称为零时差攻击)的情况下执行此操作。但是,由于Internet流量非常复杂且不可预测,而受到随机性和随机性的极大影响,因此将由于攻击与正常峰值或流量的急剧变化而引起的异常事件区分开可能会成为经典的“大海捞针”问题。背景噪声的影响。为了应对这一挑战,我们基于对互联网流量的非线性不变特性的利用,利用机器学习来开发一种新颖的网络异常检测解决方案。这些属性通过捕获其混沌和分形特征,更适合于表示归纳学习模型中的更多固有和判别动力学,这些模型可用于通过逻辑回归有效地将以前看不见的交通总量或单个流量分类为“正常”或“ “异常”的。在一个标准且可重现的实验验证框架内获得的性能评估结果表明,该方法能够在复杂的流量混合情况下有效隔离非常不同种类的大量“拒绝服务”攻击,其准确性和准确性都非常令人满意。精确。

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