基于过滤器特征选择和支持向量机的网络攻击检测系统

V. J. L. Engel, Firhat Hidayat, Richard Dwiputra
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引用次数: 0

摘要

特征的选择对提高计算机网络攻击检测系统的检测效果起着至关重要的作用。本研究使用特征选择模型来寻找网络流量特征的最佳组合,以识别网络攻击,同时保留功率解释。本研究还采用基于滤波器的特征选择,即信息增益(Information Gain, IG)和增益比(Gain Ratio, GR)。确定支持向量机参数的sigma值后,即可进行训练和测试。从sigma值检验中,我们选择sigma值为5000。经过SVM训练,发现增益比为30个特征时,对大多数测量和类的效果最好。然而,对于探针类,41个特性的性能优于IG和GR。此外,集成特征选择的模型有可能收敛得更快。建议进一步分析和检查,以了解特征组合结果。此外,还需要进一步的研究来确定特征组合对提高模型性能的有效性,并尝试除基于滤波器的方法之外的不同方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Attack Detection System Using Filter-based Feature Selection and SVM
The selection of features plays a big role in improving the results of a computer network attack detection system. This research used a model of feature selection to find the best combination of network traffic features to identify network attacks while retaining power explanations. This research also used filter-based feature selection, namely Information Gain (IG) and Gain Ratio (GR). Training and testing can be carried out after sigma value of SVM parameter has been determined. From sigma value testing, we chose sigma value of 5000. After SVM training, it is found that Gain Ratio with 30 features perform best for most measurement and classes. Nevertheless, full 41 features outperform IG and GR for probe class. Also, model that integrating feature selection has possibility to converge faster. It is recommended that further analysis and examination is needed to understand features combination result. Additionally, further research is needed to determine the effectiveness of features combinations to improve model performance and to try different approaches besides the filter-based method.
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