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Network Intrusion Detection Based on Random Forest and Support Vector Machine

机译:基于随机森林和支持向量机的网络入侵检测

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摘要

The network intrusion detection techniques are important to prevent our system and network from malicious behaviors. In order to improve accuracy of network intrusion detection, machine learning, feature selection and optimization methods have been used, and the result tell us that the combination of machine learning and feature selection can improve accuracy. In this study, we developed a new machine learning approach for predicting network intrusion based on random forest and support vector machine. Since there were many potential features for network intrusion classification, random forest were used for feature selection based on variable importance score. We found that the host-based statistical features of network flow play an important role in predicting network intrusion. The performance of the support vector machine which used the 14 selected features on KDD 99 dataset has been evaluated by comparing it with the total(41) features and popular classifiers. The result showed that the selected features can achieve higher attack detection rate and it can be one of the competitive classifier for network intrusion detection.
机译:网络入侵检测技术对于防止我们的系统和网络遭受恶意行为很重要。为了提高网络入侵检测的准确性,已经使用了机器学习,特征选择和优化方法,结果告诉我们,机器学习和特征选择的结合可以提高准确性。在这项研究中,我们开发了一种新的机器学习方法,用于基于随机森林和支持向量机的网络入侵预测。由于网络入侵分类有许多潜在特征,因此基于可变重要性得分,使用随机森林进行特征选择。我们发现,基于主机的网络流量统计功能在预测网络入侵方面起着重要作用。支持向量机在KDD 99数据集上使用了14个选定特征的性能已通过与total(41)特征和常用分类器进行比较进行了评估。结果表明,所选择的特征可以达到较高的攻击检测率,可以作为网络入侵检测的竞争分类器之一。

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