AICRSESep 27, 2025

Beyond Embeddings: Interpretable Feature Extraction for Binary Code Similarity

arXiv:2509.23449v1h-index: 11
Originality Highly original
AI Analysis

This work addresses the trade-off between interpretability, generalizability, and scalability in binary code analysis for reverse engineering, offering a solution that benefits malware analysts and security researchers.

The paper tackles the problem of binary code similarity detection by introducing a language model-based agent that generates interpretable features from assembly code, achieving recall@1 scores of 42% and 62% in cross-architecture and cross-optimization tasks, comparable to embedding methods.

Binary code similarity detection is a core task in reverse engineering. It supports malware analysis and vulnerability discovery by identifying semantically similar code in different contexts. Modern methods have progressed from manually engineered features to vector representations. Hand-crafted statistics (e.g., operation ratios) are interpretable, but shallow and fail to generalize. Embedding-based methods overcome this by learning robust cross-setting representations, but these representations are opaque vectors that prevent rapid verification. They also face a scalability-accuracy trade-off, since high-dimensional nearest-neighbor search requires approximations that reduce precision. Current approaches thus force a compromise between interpretability, generalizability, and scalability. We bridge these gaps using a language model-based agent to conduct structured reasoning analysis of assembly code and generate features such as input/output types, side effects, notable constants, and algorithmic intent. Unlike hand-crafted features, they are richer and adaptive. Unlike embeddings, they are human-readable, maintainable, and directly searchable with inverted or relational indexes. Without any matching training, our method respectively achieves 42% and 62% for recall@1 in cross-architecture and cross-optimization tasks, comparable to embedding methods with training (39% and 34%). Combined with embeddings, it significantly outperforms the state-of-the-art, demonstrating that accuracy, scalability, and interpretability can coexist.

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