Introducing a Comprehensive, Continuous, and Collaborative Survey of Intrusion Detection Datasets
August 05, 2024 Β· Declared Dead Β· π CSET @ USENIX Security Symposium
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Authors
Philipp BΓΆnninghausen, Rafael Uetz, Martin Henze
arXiv ID
2408.02521
Category
cs.CR: Cryptography & Security
Citations
6
Venue
CSET @ USENIX Security Symposium
Last Checked
4 months ago
Abstract
Researchers in the highly active field of intrusion detection largely rely on public datasets for their experimental evaluations. However, the large number of existing datasets, the discovery of previously unknown flaws therein, and the frequent publication of new datasets make it hard to select suitable options and sufficiently understand their respective limitations. Hence, there is a great risk of drawing invalid conclusions from experimental results with respect to detection performance of novel methods in the real world. While there exist various surveys on intrusion detection datasets, they have deficiencies in providing researchers with a profound decision basis since they lack comprehensiveness, actionable details, and up-to-dateness. In this paper, we present COMIDDS, an ongoing effort to comprehensively survey intrusion detection datasets with an unprecedented level of detail, implemented as a website backed by a public GitHub repository. COMIDDS allows researchers to quickly identify suitable datasets depending on their requirements and provides structured and critical information on each dataset, including actual data samples and links to relevant publications. COMIDDS is freely accessible, regularly updated, and open to contributions.
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