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Autori principali: Miao, Shuyi, Qiu, Wangjie, Zheng, Hongwei, Zhang, Qinnan, Tu, Xiaofan, Liu, Xunan, Liu, Yang, Dong, Jin, Zheng, Zhiming
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2411.18875
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author Miao, Shuyi
Qiu, Wangjie
Zheng, Hongwei
Zhang, Qinnan
Tu, Xiaofan
Liu, Xunan
Liu, Yang
Dong, Jin
Zheng, Zhiming
author_facet Miao, Shuyi
Qiu, Wangjie
Zheng, Hongwei
Zhang, Qinnan
Tu, Xiaofan
Liu, Xunan
Liu, Yang
Dong, Jin
Zheng, Zhiming
contents The scaled Web 3.0 digital economy, represented by decentralized finance (DeFi), has sparked increasing interest in the past few years, which usually relies on blockchain for token transfer and diverse transaction logic. However, illegal behaviors, such as financial fraud, hacker attacks, and money laundering, are rampant in the blockchain ecosystem and seriously threaten its integrity and security. In this paper, we propose a novel double graph-based Ethereum account de-anonymization inference method, dubbed DBG4ETH, which aims to capture the behavioral patterns of accounts comprehensively and has more robust analytical and judgment capabilities for current complex and continuously generated transaction behaviors. Specifically, we first construct a global static graph to build complex interactions between the various account nodes for all transaction data. Then, we also construct a local dynamic graph to learn about the gradual evolution of transactions over different periods. Different graphs focus on information from different perspectives, and features of global and local, static and dynamic transaction graphs are available through DBG4ETH. In addition, we propose an adaptive confidence calibration method to predict the results by feeding the calibrated weighted prediction values into the classifier. Experimental results show that DBG4ETH achieves state-of-the-art results in the account identification task, improving the F1-score by at least 3.75% and up to 40.52% compared to processing each graph type individually and outperforming similar account identity inference methods by 5.23% to 12.91%.
format Preprint
id arxiv_https___arxiv_org_abs_2411_18875
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Know Your Account: Double Graph Inference-based Account De-anonymization on Ethereum
Miao, Shuyi
Qiu, Wangjie
Zheng, Hongwei
Zhang, Qinnan
Tu, Xiaofan
Liu, Xunan
Liu, Yang
Dong, Jin
Zheng, Zhiming
Social and Information Networks
The scaled Web 3.0 digital economy, represented by decentralized finance (DeFi), has sparked increasing interest in the past few years, which usually relies on blockchain for token transfer and diverse transaction logic. However, illegal behaviors, such as financial fraud, hacker attacks, and money laundering, are rampant in the blockchain ecosystem and seriously threaten its integrity and security. In this paper, we propose a novel double graph-based Ethereum account de-anonymization inference method, dubbed DBG4ETH, which aims to capture the behavioral patterns of accounts comprehensively and has more robust analytical and judgment capabilities for current complex and continuously generated transaction behaviors. Specifically, we first construct a global static graph to build complex interactions between the various account nodes for all transaction data. Then, we also construct a local dynamic graph to learn about the gradual evolution of transactions over different periods. Different graphs focus on information from different perspectives, and features of global and local, static and dynamic transaction graphs are available through DBG4ETH. In addition, we propose an adaptive confidence calibration method to predict the results by feeding the calibrated weighted prediction values into the classifier. Experimental results show that DBG4ETH achieves state-of-the-art results in the account identification task, improving the F1-score by at least 3.75% and up to 40.52% compared to processing each graph type individually and outperforming similar account identity inference methods by 5.23% to 12.91%.
title Know Your Account: Double Graph Inference-based Account De-anonymization on Ethereum
topic Social and Information Networks
url https://arxiv.org/abs/2411.18875