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Network Intrusion Detection by Support Vectors and Ant Colony

机译:基于支持向量和蚁群的网络入侵检测

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摘要

This paper presents a framework for a new approach in intrusion detection by combining two existing machine learning methods (i.e. SVM and CSOACN). The IDS based on the new algorithm can be applied as pure SVM, pure CSOACN or their combination by constructing the detection classifier under three different training modes respectively. The initial experiments indicate that performance of their combination is better than pure SVM in terms of higher average detection rate as well as lower rates of both negative and positive false and is better than pure CSOACN in terms of less training time with comparable detection rate and false alarm rates.
机译:本文通过结合两种现有的机器学习方法(即SVM和CSOACN),提出了一种新的入侵检测方法的框架。通过在三种不同的训练模式下分别构造检测分类器,可以将基于新算法的入侵检测系统作为纯SVM,纯CSOACN或它们的组合应用。最初的实验表明,在更高的平均检出率以及更低的阴性和阳性假率方面,它们的组合性能优于纯SVM,并且在更少的训练时间下具有可比的检出率和假率方面优于纯CSOACN。警报率。

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