Revisiting Binary Code Similarity Analysis using Interpretable Feature Engineering and Lessons Learned

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Binary code similarity analysis (BCSA) is widely used for diverse security applications such as plagiarism detection, software license violation detection, and vulnerability discovery. Despite the surging research interest in BCSA, it is significantly challenging to perform new research in this field for several reasons. First, most existing approaches focus only on the end results, namely, increasing the success rate of BCSA by adopting uninterpretable machine learning. Moreover, they utilize their own benchmark sharing neither the source code nor the entire dataset. Finally, researchers often use different terminologies or even use the same technique without citing the previous literature properly, which makes it difficult to reproduce or extend previous work. To address these problems, we take a step back from the mainstream and contemplate fundamental research questions for BCSA. Why does a certain technique or a feature show better results than the others? Specifically, we conduct the first systematic study on the basic features used in BCSA by leveraging interpretable feature engineering on a large-scale benchmark. Our study reveals various useful insights on BCSA. For example, we show that a simple interpretable model with a few basic features can achieve a comparable result to that of recent deep learning-based approaches. Furthermore, we show that the way we compile binaries or the correctness of underlying binary analysis tools can significantly affect the performance of BCSA. Lastly, we make all our source code and benchmark public and suggest future directions in this field to help further research.
Publisher
IEEE COMPUTER SOC
Issue Date
2023-04
Language
English
Article Type
Article
Citation

IEEE TRANSACTIONS ON SOFTWARE ENGINEERING, v.49, no.4, pp.1661 - 1682

ISSN
0098-5589
DOI
10.1109/tse.2022.3187689
URI
http://hdl.handle.net/10203/306393
Appears in Collection
CS-Journal Papers(저널논문)EE-Journal Papers(저널논문)
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