用于以太坊欺诈检测的图神经网络

Runnan Tan, Qingfeng Tan, Peng Zhang, Zhao Li
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引用次数: 8

摘要

目前,区块链技术已广泛应用于各个行业,引起了广泛的关注。然而,由于其独特的匿名性,数字货币成为了各种网络犯罪的避风港。据报道,以太坊欺诈提供了巨额利润,并对以太坊网络的财务安全构成了严重威胁。为了创造理想的金融环境,迫切需要一种有效的方法来自动检测和识别以太坊系统治理中的以太坊欺诈行为。鉴于此,本文提出了一种通过挖掘基于以太坊的交易记录来检测以太坊欺诈的方法。具体来说,使用网络爬虫捕获标记的欺诈地址,然后基于公共交易账簿重构交易网络。然后,提出了一种基于数量的网络嵌入算法来提取节点特征,用于识别欺诈交易。最后,利用图卷积网络模型将地址分为合法地址和欺诈地址。实验结果表明,该系统检测欺诈性交易的准确率可达到95%,体现了该系统检测以太坊欺诈性交易的优异性能。
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Graph Neural Network for Ethereum Fraud Detection
Currently, the blockchain technology has been widely applied to various industries, and has attracted wide attention. However, because of its unique anonymity, digital currency has become a haven for all kinds of cyber crimes. It has been reported that Ethereum frauds provide huge profits, and pose a serious threat to the financial security of the Ethereum network. To create a desired financial environment, an effective method is urgently needed to automatically detect and identify Ethereum frauds in the governance of the Ethereum system. In view of this, this paper proposes a method for detecting Ethereum frauds by mining Ethereum-based transaction records. Specifically, web crawlers are used to capture labeled fraudulent addresses, and then a transaction network is reconstructed based on the public transaction book. Then, an amount-based network embedding algorithm is proposed to extract node features for identifying fraudulent transactions. At last, the graph convolutional network model is used to classify addresses into legal addresses and fraudulent addresses. The experimental results show that the system for detecting fraudulent transactions can achieve the accuracy of 95%, which reflects the excellent performance of the system for detecting Ethereum fraudulent transactions.
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