3.8 Proceedings Paper

Troubleshooting an Intrusion Detection Dataset: the CICIDS2017 Case Study

出版社

IEEE COMPUTER SOC
DOI: 10.1109/SPW53761.2021.00009

关键词

network intrusion detection; machine learning; benchmark dataset; data collection

资金

  1. Research Fund KU Leuven
  2. Flemish Research Programme Cybersecurity

向作者/读者索取更多资源

The paper explores the effectiveness of machine learning in network intrusion detection and the challenges faced in applying it to large-scale network environments. By revisiting the CICIDS2017 dataset and addressing issues in data processing, improvements in model evaluation were achieved. Addressing data collection issues can have a significant impact on the performance of machine learning algorithms and recommendations for anticipation and prevention are provided.
Numerous studies have demonstrated the effectiveness of machine learning techniques in application to network intrusion detection. And yet, the adoption of machine learning for securing large-scale network environments remains challenging. The community acknowledges that network security presents unique challenges for machine learning, and the lack of training data representative of modern traffic remains one of the most intractable issues. New attempts are continuously made to develop high quality benchmark datasets and proper data collection methodologies. The CICIDS2017 dataset is one of the recent results, created to meet the demanding criterion of representativeness for network intrusion detection. In this paper we revisit CICIDS2017 and its data collection pipeline and analyze correctness, validity and overall utility of the dataset for the learning task. During this in-depth analysis, we uncover a series of problems with traffic generation, flow construction, feature extraction and labelling that severely affect the aforementioned properties. We investigate the causes of these shortcomings and address most of them by applying an improved data processing methodology. As a result, more than 20 percent of original traffic traces are reconstructed or relabelled. Machine learning benchmarks on the final dataset demonstrate significant improvements. Our study exemplifies how data collection issues may have enormous impact on model evaluation and provides recommendations for their anticipation and prevention.

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