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Coordinated Internet attacks: responding to attack complexity

机译:互联网协同攻击:应对攻击复杂性

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This paper examines the issues involved with responding to complex Internet attacks. Such attacks characteristically occur in stages over extended periods of time and allow specific actions in a particular stage to be interchangeable. The stages can be extremely difficult to correlate because they are separated in time, and these effects can be deliberately obscured to achieve the goals of the attacker. We have chosen an approach to intrusion detection using Hidden Markov Models (HMMs) that explicitly addresses these issues. As part of our research we also developed a methodology for labeling examples that reduced the effort involved from that of labeling thousands of training examples to that of labeling less than two hundred feature values. When compared with two classic machine learning algorithms, decision trees and neural nets, the HMM algorithm provides an approximately five-% performance advantage over the decision tree algorithm, and at least a thirty % advantage over neural nets, at all training levels. The HMM performance advantage over decision trees is shown to increase as the complexity of the attack increases. The HMM performance advantage also increases as the number of training examples decreases. This last result indicates that the HMM algorithm may have additional benefit when examples of a particular attack type are rare.
机译:本文研究了应对复杂的Internet攻击所涉及的问题。这种攻击通常会在较长时间段内分阶段发生,并允许特定阶段中的特定操作可以互换。这些阶段可能很难关联,因为它们在时间上是分开的,并且可以故意掩盖这些影响以实现攻击者的目标。我们选择了使用隐马尔可夫模型(HMM)进行入侵检测的方法,可以明确解决这些问题。作为我们研究的一部分,我们还开发了一种标注示例的方法,该方法将标注数千个训练示例所花费的精力减少到标注不到200个特征值所花费的精力。与两种经典的机器学习算法(决策树和神经网络)相比,HMM算法在所有训练水平上均比决策树算法具有约5%的性能优势,与神经网络相比具有至少30%的优势。随着攻击的复杂性增加,HMM在决策树上的性能优势也随之增加。 HMM性能优势也随着训练示例数量的减少而增加。最后的结果表明,当特定攻击类型的示例很少时,HMM算法可能会具有其他优势。

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