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Neural networks-based detection of stepping-stone intrusion

机译:基于神经网络的踏脚石入侵检测

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When network intruders launch attacks to a victim host, they try to avoid revealing their identities by indirectly connecting to the victim through a sequence of intermediary hosts, called stepping-stones. One effective stepping-stone detection mechanism is to detect such a long connection chain by estimating the number of stepping-stones. Artificial neural networks provide the potential to identify and classify network activities. In this paper, we propose an approach that utilizes the analytical strengths of neural networks to detect stepping-stone intrusion. Two schemes are developed for neural network investigation. One uses eight packet variables and the other clusters a sequence of consecutive packet round-trip times. The experimental results show that using neural networks as the detection tool works well to predict the number of stepping-stones for incoming packets by both proposed schemes through monitoring a connection chain with a few packets. In addition, various transfer functions and learning rules are studied and it is observed that using Sigmoid transfer function and Delta learning rule generally provides better prediction.
机译:当网络入侵者向受害主机发起攻击时,他们试图通过一系列中间主机(称为垫脚石)间接连接到受害人,从而避免透露自己的身份。一种有效的踏脚石检测机制是通过估算踏脚石的数量来检测如此长的连接链。人工神经网络提供了识别和分类网络活动的潜力。在本文中,我们提出了一种利用神经网络的分析强度来检测踏脚石入侵的方法。为神经网络研究开发了两种方案。一个使用八个数据包变量,另一个使用一系列连续的数据包往返时间。实验结果表明,使用神经网络作为检测工具,通过监视带有少量数据包的连接链,可以很好地预测两种数据包方案的传入数据包的垫脚石数量。此外,对各种传递函数和学习规则进行了研究,发现使用Sigmoid传递函数和Delta学习规则通常可以提供更好的预测。

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