基于集成特征选择的入侵检测聚类分类

F. Salo, M. Injadat, Abdallah Moubayed, A. B. Nassif, A. Essex
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引用次数: 32

摘要

机器学习已经被用来提高入侵检测系统(ids)的有效性。然而,这种方法的重点主要是基于过时的数据集检测已知的攻击模式。在本文中,我们提出了一种集成特征选择方法以及一种异常检测方法,该方法结合了无监督和有监督机器学习技术来对网络流量进行分类,以识别以前未见过的攻击模式。为此,使用了三种不同的特征选择技术作为集成模型的一部分,该模型选择了8个公共特征。此外,k- means聚类首先使用曼哈顿距离将训练实例划分为k个聚类。然后基于生成的聚类构建分类模型,聚类代表正常或异常实例的密度区域。这反过来又有助于确定聚类在检测数据中未知攻击模式方面的有效性。我们的分类器的性能使用京都数据集进行评估,该数据集收集于2006年至2015年之间。据我们所知,以前没有工作提出过这样一个框架,使用该数据集结合了无监督和有监督机器学习方法。实验结果表明,与传统的分类方法相比,该框架在检测以前未见过的攻击模式方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Enabled Classification using Ensemble Feature Selection for Intrusion Detection
Machine learning has been leveraged to increase the effectiveness of intrusion detection systems (IDSs). The focus of this approach, however, has largely be on detecting known attack patterns based on outdated datasets. In this paper, we propose an ensemble feature selection method along with an anomaly detection method that combines unsupervised and supervised machine learning techniques to classify network traffic to identify previously unseen attack patterns. To that end, three different feature selection techniques are used as part of an ensemble model that selects 8 common features. Moreover, k-Means clustering is used to first partition the training instances into k clusters using the Manhattan distance. A classification model is then built based on the resulting clusters, which represent a density region of normal or anomaly instances. This in turn helps determine the effectiveness of the clustering in detecting unknown attack patterns within the data. The performance of our classifier is evaluated using the Kyoto dataset, which was collected between 2006 and 2015. To our knowledge, no previous work proposed such a framework that combines unsupervised and supervised machine learning approaches using this dataset. Experimental results show the effectiveness of the proposed framework in detecting previously unseen attack patterns compared to the traditional classification approach.
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