机器学习检测DDoS攻击技术的元评估

N. Jyoti, Sunny Behal
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引用次数: 12

摘要

分布式拒绝服务攻击(DDoS)是网络安全领域的一个动态挑战。这些攻击禁止合法用户按其需求使用网络资源。入侵检测系统(ids)可以检测到特定限制的攻击,因此应始终配备新型防御解决方案,以对抗最新的攻击。在本文中,作者评估了各种ML分类器(如BayesNet,朴素贝叶斯,J48和随机森林)检测DDoS攻击的性能。在这种方法中,KDDCup99数据集用于训练和测试目的。利用主成分分析(PCA)方法进行特征选择,从数据集中选择最优的特征。通过主成分分析法选取排名靠前的20个特征,进行10次交叉验证来衡量系统的鲁棒性。使用WEKA机器学习工作台对各种攻击类型进行分类并验证其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Meta-evaluation of Machine Learning Techniques for Detection of DDoS Attacks
Distributed Denial of Service Attack (DDoS) is a dynamic challenge in the field of network security. These attacks ban legitimate users from utilizing network resources as per their requirements. Intrusion Detection Systems (IDSs) can detect attacks up to a specific limit so it should always be equipped with a new type of defence solutions to combat the latest attacks. In this paper, authors evaluate the performance of various ML classifiers such as BayesNet, Naive Bayes, J48 and Random Forest to detect DDoS attacks. In this methodology, KDDCup99 data set is used for training and testing purpose. Principal Component Analysis (PCA) method is utilized for feature selection, choosing the most optimal features from the data set. By selecting top-ranked 20 features through PCA method, 10 fold cross-validation is done to measure the system's robustness. WEKA machine learning workbench is used to classify various attack types and validate its performance.
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