Han Liu, Chao Liu, Wenqi Zhao, Yu Jiang, Jiaguang Sun
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S-gram: Towards Semantic-Aware Security Auditing for Ethereum Smart Contracts
Smart contracts, as a promising and powerful application on the Ethereum blockchain, have been growing rapidly in the past few years. Since they are highly vulnerable to different forms of attacks, their security becomes a top priority. However, existing security auditing techniques are either limited in finding vulnerabilities (rely on pre-defined bug patterns) or very expensive (rely on program analysis), thus are insufficient for Ethereum. To mitigate these limitations, we proposed a novel semantic-aware security auditing technique called S-GRAM for Ethereum. The key insight is a combination of N-gram language modeling and lightweight static semantic labeling, which can learn statistical regularities of contract tokens and capture high-level semantics as well (e.g., flow sensitivity of a transaction). S-GRAM can be used to predict potential vulnerabilities by identifying irregular token sequences and optimize existing in-depth analyzers (e.g., symbolic execution engines, fuzzers etc.). We have implemented S-GRAM for Solidity smart contracts in Ethereum. The evaluation demonstrated the potential of S-GRAM in identifying possible security issues.