An Enhanced Anomaly Detection in Web Traffic Using a Stack of Classifier Ensemble

  • Tama, Bayu Adhi
  • Nkenyereye, Lewis
  • Islam, S. M. Riazul
  • Kwak, Kyung-Sup
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105

초록

A Web attack protection system is extremely essential in today & x2019;s information age. Classifier ensembles have been considered for anomaly-based intrusion detection in Web traffic. However, they suffer from an unsatisfactory performance due to a poor ensemble design. This paper proposes a stacked ensemble for anomaly-based intrusion detection systems in a Web application. Unlike a conventional stacking, where some single weak learners are prevalently used, the proposed stacked ensemble is an ensemble architecture, yet its base learners are other ensembles learners, i.e. random forest, gradient boosting machine, and XGBoost. To prove the generalizability of the proposed model, two datasets that are specifically used for attack detection in a Web application, i.e. CSIC-2010v2 and CICIDS-2017 are used in the experiment. Furthermore, the proposed model significantly surpasses existing Web attack detection techniques concerning the accuracy and false positive rate metrics. Validation result on the CICIDS-2017, NSL-KDD, and UNSW-NB15 dataset also ameliorate the ones obtained by some recent techniques. Finally, the performance of all classification algorithms in terms of a two-step statistical significance test is further discussed, providing a value-added contribution to the current literature.

키워드

Random forestgradient boosting machineWeb attackperformance benchmarkanomaly-based IDSssignificance testsINTRUSION-DETECTIONMODELIDS
제목
An Enhanced Anomaly Detection in Web Traffic Using a Stack of Classifier Ensemble
저자
Tama, Bayu AdhiNkenyereye, LewisIslam, S. M. RiazulKwak, Kyung-Sup
DOI
10.1109/ACCESS.2020.2969428
발행일
2020
유형
Article
저널명
IEEE Access
8
페이지
24120 ~ 24134