Data Mining in Cyber Threat Analysis – Neural Networks for Intrusion Detection

E. Bognár
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引用次数: 1

Abstract

The most important features and constraints of the commercial intrusion detection (IDS) and prevention (IPS) systems and the possibility of application of artificial intelligence and neural networks such as IDS or IPS were investigated. A neural network was trained using the Levenberg-Marquardt backpropagation algorithm and applied on the Knowledge Discovery and Data Mining (KDD)’99 [14] reference dataset. A very high (99.9985%) accuracy and rather low (3.006%) false alert rate was achieved, but only at the expense of high memory consumption and low computation speed. To overcome these limitations, the selection of training data size was investigated. Result shows that a neural network trained on ca. 50,000 data is enough to achieve a detection accuracy of 99.82%.
网络威胁分析中的数据挖掘——入侵检测中的神经网络
分析了商业入侵检测和防御系统的主要特点和制约因素,以及人工智能和神经网络在商业入侵检测和防御系统中的应用可能性。使用Levenberg-Marquardt反向传播算法训练神经网络,并将其应用于知识发现和数据挖掘(KDD) ' 99[14]参考数据集。实现了非常高(99.9985%)的准确率和相当低(3.006%)的误报率,但代价是高内存消耗和低计算速度。为了克服这些限制,研究了训练数据大小的选择。结果表明,在大约5万个数据上训练的神经网络足以达到99.82%的检测准确率。
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