Analyzing Machine Learning-based Feature Selection for Botnet Detection

W. Safitri, T. Ahmad, Dandy Pramana Hostiadi
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引用次数: 3

Abstract

In this cyber era, the number of cybercrime problems grows significantly, impacting network communication security. Some factors have been identified, such as malware. It is a malicious code attack that is harmful. On the other hand, a botnet can exploit malware to threaten whole computer networks. Therefore, it needs to be handled appropriately. Several botnet activity detection models have been developed using a classification approach in previous studies. However, it has not been analyzed about selecting features to be used in the learning process of the classification algorithm. In fact, the number and selection of features implemented can affect the detection accuracy of the classification algorithm. This paper proposes an analysis technique for determining the number and selection of features developed based on previous research. It aims to obtain the analysis of using features. The experiment has been conducted using several classification algorithms, namely Decision tree, k-NN, Naïve Bayes, Random Forest, and Support Vector Machine (SVM). The results show that taking a certain number of features increases the detection accuracy. Compared with previous studies, the results obtained show that the average detection accuracy of 98.34% using four features has the highest value from the previous study, 97.46% using 11 features. These results indicate that the selection of the correct number and features affects the performance of the botnet detection model.
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基于机器学习的僵尸网络检测特征选择分析
在这个网络时代,网络犯罪问题的数量显著增长,影响着网络通信安全。已经确定了一些因素,比如恶意软件。这是一种有害的恶意代码攻击。另一方面,僵尸网络可以利用恶意软件威胁整个计算机网络。因此,需要适当处理。在以前的研究中,已经使用分类方法开发了几种僵尸网络活动检测模型。然而,在分类算法的学习过程中,如何选择需要使用的特征并没有被分析。实际上,实现特征的数量和选择会影响分类算法的检测精度。本文在前人研究的基础上,提出了一种确定特征数量和特征选择的分析技术。目的是获得对使用特征的分析。实验使用了几种分类算法,分别是决策树、k-NN、Naïve贝叶斯、随机森林和支持向量机(SVM)。结果表明,选取一定数量的特征可以提高检测精度。结果表明,使用4个特征的平均检测准确率为98.34%,使用11个特征的平均检测准确率为97.46%,是以往研究中最高的。这些结果表明,正确选择数量和特征会影响僵尸网络检测模型的性能。
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