19
0

Data Flows in You: Benchmarking and Improving Static Data-flow Analysis on Binary Executables

Main:13 Pages
2 Figures
Bibliography:1 Pages
2 Tables
Abstract

Data-flow analysis is a critical component of security research. Theoretically, accurate data-flow analysis in binary executables is an undecidable problem, due to complexities of binary code. Practically, many binary analysis engines offer some data-flow analysis capability, but we lack understanding of the accuracy of these analyses, and their limitations. We address this problem by introducing a labeled benchmark data set, including 215,072 microbenchmark test cases, mapping to 277,072 binary executables, created specifically to evaluate data- flow analysis implementations. Additionally, we augment our benchmark set with dynamically-discovered data flows from 6 real-world executables. Using our benchmark data set, we evaluate three state of the art data-flow analysis implementations, in angr, Ghidra and Miasm and discuss their very low accuracy and reasons behind it. We further propose three model extensions to static data-flow analysis that significantly improve accuracy, achieving almost perfect recall (0.99) and increasing precision from 0.13 to 0.32. Finally, we show that leveraging these model extensions in a vulnerability-discovery context leads to a tangible improvement in vulnerable instruction identification.

View on arXiv
@article{weideman2025_2506.00313,
  title={ Data Flows in You: Benchmarking and Improving Static Data-flow Analysis on Binary Executables },
  author={ Nicolaas Weideman and Sima Arasteh and Mukund Raghothaman and Jelena Mirkovic and Christophe Hauser },
  journal={arXiv preprint arXiv:2506.00313},
  year={ 2025 }
}
Comments on this paper