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ProvSec: Cybersecurity System Provenance Analysis Benchmark Dataset.

SERA(2023)

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Abstract
System provenance forensic analysis has been studied by a large body of research work. This area needs fine granularity data such as system calls along with event fields to track the dependencies of events. While prior work on security datasets has been proposed, we found a useful dataset of realistic attacks and details that can be used for provenance tracking is lacking. We created a new dataset of eleven vulnerable cases for system forensic analysis. It includes the full details of system calls including syscall parameters. Realistic attack scenarios with real software vulnerabilities and exploits are used. Also, we created two sets of benign and adversary scenarios which are manually labeled for supervised machine-learning analysis. We demonstrate the details of the dataset events and dependency analysis.
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Key words
adversary scenarios,cybersecurity system provenance analysis benchmark dataset,fine granularity data,provenance tracking,ProvSec,realistic attacks,supervised machine-learning analysis,syscall parameters,system calls,system provenance forensic analysis
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