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Unraveling the MEV enigma: ABI-free detection model using Graph Neural Networks

Authors
Park, SeongwanJeong, WoojinLee, YunyoungSon, BumhoJang, HuisuLee, Jaewook
Issue Date
Apr-2024
Publisher
Elsevier B.V.
Keywords
Anomaly detection; Blockchain; Decentralization; Graph Neural Networks; Maximal Extractable Value; Security
Citation
Future Generation Computer Systems, v.153, pp 70 - 83
Pages
14
Journal Title
Future Generation Computer Systems
Volume
153
Start Page
70
End Page
83
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/72035
DOI
10.1016/j.future.2023.11.014
ISSN
0167-739X
1872-7115
Abstract
The detection of Maximal Extractable Value (MEV) in blockchain is crucial for enhancing blockchain security, as it enables the evaluation of potential consensus layer risks, the effectiveness of anti-centralization solutions, and the assessment of user exploitation. However, existing MEV detection methods face limitations due to their low recall rate, reliance on pre-registered Application Binary Interfaces (ABIs) and the need for continuous monitoring of new DeFi services. In this paper, we propose ArbiNet, a novel GNN-based detection model that offers a low-overhead and accurate solution for MEV detection without requiring knowledge of smart contract code or ABIs. We collected an extensive MEV dataset, surpassing currently available public datasets, to train ArbiNet. Our implemented model and open dataset enhance the understanding of the MEV landscape, serving as a foundation for MEV quantification and improved blockchain security. © 2023 Elsevier B.V.
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