FA-GNN: Filter and Augment Graph Neural Networks for Account Classification in Ethereum
【Author】 Liu, Jieli; Zheng, Jiatao; Wu, Jiajing; Zheng, Zibin
【Source】IEEE TRANSACTIONS ON NETWORK SCIENCE AND ENGINEERING
【影响因子】5.033
【Abstract】As the first blockchain platform supporting smart contracts, Ethereum has become increasingly popular in recent years and generates a massive number of transaction records. Nowadays, millions of accounts in Ethereum have been reported to participate in a variety of businesses, and some of them have been found to be involved in illegal behaviors or even cyber-crimes by exploiting the pseudonymous nature of blockchain. Therefore, there is an urgent need for an effective method to conduct account classification and audit transaction behaviors of each account. In this paper, we model the Ethereum transaction records as a transaction network, and the account classification problem is converted to a node classification problem. Based on the Ethereum transaction network, we propose a novel framework named Filter and Augment Graph Neural Network (FA-GNN), which can retain the information of important neighbors and augment node features with high-order information. Experimental results demonstrate that our proposed FA-GNN outperforms state-of-the-art methods in Ethereum account classification.
【Keywords】Blockchains; Task analysis; Feature extraction; Cryptocurrency; Peer-to-peer computing; Graph neural networks; Network analyzers; Blockchain; complex network; ethereum; network embedding; transaction network
【发表时间】2022 JUL-AUG
【收录时间】2022-07-30
【文献类型】理论性文章
【主题类别】
区块链治理-技术治理-实体分类
wangjiaxin
发表在《IEEE TRANSACTIONS ON NETWORK SCIENCE AND ENGINEERING》,https://doi.org/10.1109/TNSE.2022.3166655,本文提出将以太坊交易记录建模为一个交易网络,将账户分类问题转化为节点分类问题。基于以太坊交易网络,我们提出了一种新的过滤增强图神经网络(FA-GNN)框架,该框架可以保留重要邻居的信息,用高阶信息增强节点特征。
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