Cross-chain technology enhances the interconnection among independent blockchains and mitigates the isolated data island. It achieves the asset transfer/exchange between different blockchains via cross-chain transactions. The lack of uniformity in cross-chain architecture increases the difficulty of cross-chain transaction regulation. Abnormal account detection can effectively identify malicious behaviors. However, existing schemes are only designed for the single blockchain and cannot directly be applied to cross-chain due to independent transaction structures. It still lacks feasible abnormal account detection mechanism to supervise cross-chain transactions. In this paper, we propose CrossAAD, a cross-chain abnormal account detection approach to effectively protect cross-chain transactions. CrossAAD is built on top of a new cross-chain bridge dataset, integrated with the intensive feature extraction & processing and the adjusted XGBoost model. Four typical models are compared to analyze their applicability in cross-chain scenarios. We implement a prototype system of CrossAAD based on a real dataset with 425,889 transactions. The experimental results show that CrossAAD has a comparable performance with state-of-the-art single-chain schemes, with 95% precision and 87% recall on normal labels, and 71% precision and 87% recall on abnormal labels.
Funding
National Key Research and Development Program of China (2022YFB2702903)
History
Journal title
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)