The following publications are possibly variants of this publication:
- DeeSCVHunter: A Deep Learning-Based Framework for Smart Contract Vulnerability DetectionXingxin Yu, Haoyue Zhao, Botao Hou, Zonghao Ying, Bin Wu. ijcnn 2021: 1-8 [doi]
- GraBit: A Sequential Model-Based Framework for Smart Contract Vulnerability DetectionHuijuan Zhu, Kaixuan Yang, Liangmin Wang 0001, Zhi-cheng Xu, Victor S. Sheng. issre 2023: 568-577 [doi]
- DL4SC: a novel deep learning-based vulnerability detection framework for smart contractsYang Liu 0003, Chao Wang, Yan Ma. ASE, 31(1):24, June 2024. [doi]
- A Vulnerability Detection Framework for Hyperledger Fabric Smart Contracts Based on Dynamic and Static AnalysisPeiru Li, Shanshan Li, Mengjie Ding, Jiapeng Yu, He Zhang, Xin Zhou, Jingyue Li. EASE 2022: 366-374 [doi]
- EtherGIS: A Vulnerability Detection Framework for Ethereum Smart Contracts Based on Graph Learning FeaturesQingren Zeng, Jiahao He, Gansen Zhao, Shuangyin Li, Jingji Yang, Hua Tang, Haoyu Luo. compsac 2022: 1742-1749 [doi]
- EOSIOAnalyzer: An Effective Static Analysis Vulnerability Detection Framework for EOSIO Smart ContractsWenyuan Li, Jiahao He, Gansen Zhao, Jinji Yang, Shuangyin Li, Ruilin Lai, Ping Li, Hua Tang, Haoyu Luo, Ziheng Zhou. compsac 2022: 746-756 [doi]
- Poster: A Privacy-Preserving Smart Contract Vulnerability Detection Framework for Permissioned BlockchainWensheng Tian, Lei Zhang, Shuangxi Chen, Hu Wang, Xiao Luo. ccs 2023: 3630-3632 [doi]