首页> 外文会议>Future Networks, 2010. ICFN '10 >Feature Selection and Design of Intrusion Detection System Based on k-Means and Triangle Area Support Vector Machine
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Feature Selection and Design of Intrusion Detection System Based on k-Means and Triangle Area Support Vector Machine

机译:基于k均值和三角形区域支持向量机的入侵检测系统特征选择与设计

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Nowadays, challenged by malicious use of network and intentional attacks on personal computer system, intrusion detection system has become an indispensible and infrastructural mechanism for securing critical resource and information. Most current intrusion detection systems focus on hybrid supervised and unsupervised machine learning technologies. The related work has demonstrated that they can get superior performance than applying single machine learning algorithm in detection model. Besides, with the scrutiny of related works, feature selecting and representing techniques are also essential in pursuit of high efficiency and effectiveness. Performance of specified attack type detection should also be improved and evaluated. In this paper, we incorporate information gain (IG) method for selecting more discriminative features and triangle area based support vector machine (TASVM) by combining k-means clustering algorithm and SVM classifier to detect attacks. Our system achieves accuracy of 99.83%, detection rate of 99.88% and false alarm rate of 2.99% on the 10% of KDD CUP 1999 evaluation data set. We also achieve a better detection performance for specific attack types concerning precision and recall.
机译:如今,在恶意使用网络和对个人计算机系统的故意攻击的挑战下,入侵检测系统已成为保护关键资源和信息必不可少的基础设施。当前大多数入侵检测系统都专注于混合监督和无监督机器学习技术。相关工作表明,与在检测模型中应用单机学习算法相比,它们可以获得更好的性能。此外,通过对相关作品的审查,特征选择和表示技术对于追求高效率和有效性也是必不可少的。指定攻击类型检测的性能也应得到改进和评估。在本文中,我们结合了k均值聚类算法和SVM分类器来检测攻击,并采用信息增益(IG)方法来选择更多可区分的特征和基于三角形区域的支持向量机(TASVM)。在KDD CUP 1999评估数据集的10%上,我们的系统达到了99.83%的准确度,99.88%的检测率和2.99%的误报率。对于与精度和召回率有关的特定攻击类型,我们还实现了更好的检测性能。

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