Network Intrusion Datasets: A Survey, Limitations, and Recommendations
February 10, 2025 Β· The Cartographer Β· π Computers & security
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"Title-pattern auto-detect: Network Intrusion Datasets: A Survey, Limitations, and Recommendations"
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Authors
Patrik Goldschmidt, Daniela ChudΓ‘
arXiv ID
2502.06688
Category
cs.CR: Cryptography & Security
Cross-listed
cs.NI
Citations
20
Venue
Computers & security
Last Checked
2 days ago
Abstract
Data-driven cyberthreat detection has become a crucial defense technique in modern cybersecurity. Network defense, supported by Network Intrusion Detection Systems (NIDSs), has also increasingly adopted data-driven approaches, leading to greater reliance on data. Despite the importance of data, its scarcity has long been recognized as a major obstacle in NIDS research. In response, the community has published many new datasets recently. However, many of them remain largely unknown and unanalyzed, leaving researchers uncertain about their suitability for specific use cases. In this paper, we aim to address this knowledge gap by performing a systematic literature review (SLR) of 89 public datasets for NIDS research. Each dataset is comparatively analyzed across 13 key properties, and its potential applications are outlined. Beyond the review, we also discuss domain-specific challenges and common data limitations to facilitate a critical view on data quality. To aid in data selection, we conduct a dataset popularity analysis in contemporary state-of-the-art NIDS research. Furthermore, the paper presents best practices for dataset selection, generation, and usage. By providing a comprehensive overview of the domain and its data, this work aims to guide future research toward improving data quality and the robustness of NIDS solutions.
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