评估集成分类器在检测unsw-nb15数据集上的模糊攻击时的有效性

Hoang Ngoc Thanh, T. Lang
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引用次数: 5

摘要

UNSW-NB15数据集由澳大利亚网络安全中心于2015年创建,使用IXIA工具提取正常行为和现代攻击,它包括正常数据和9种攻击类型,具有49个特征。先前的研究结果表明,在该数据集中检测Fuzzers攻击给出的分类质量最低。本文分析和评估了使用Bagging、AdaBoost、Stacking、装饰、Random Forest和Voting等已知集成技术检测UNSW-NB15数据集上的FUZZERS攻击并创建模型的性能。实验结果表明,使用决策树的AdaBoost技术对F−Measure的最佳分类质量为96.76%,而使用单个分类器和使用随机森林技术的分类质量分别为94.16%和96.36%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EVALUATING EFFECTIVENESS OF ENSEMBLE CLASSIFIERS WHEN DETECTING FUZZERS ATTACKS ON THE UNSW-NB15 DATASET
The UNSW-NB15 dataset was created by the Australian Cyber Security Centre in 2015 by using the IXIA tool to extract normal behaviors and modern attacks, it includes normal data and 9 types of attacks with 49 features. Previous research results show that the detection of Fuzzers attacks in this dataset gives the lowest classification quality. This paper analyzes and evaluates the performance of using known ensemble techniques such as Bagging, AdaBoost, Stacking, Decorate, Random Forest and Voting to detect FUZZERS attacks on UNSW-NB15 dataset to create models. The experimental results show that the AdaBoost technique with the component classifiers using decision tree for the best classification quality with F −Measure is 96.76% compared to 94.16%, which is the best result by using single classifiers and 96.36% by using the Random Forest technique.
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