使用各种机器学习技术检测以太坊网络中的欺诈账户

A. Sallam, Taha H. Rassem, Hanadi Abdu, Haneen S. Abdulkareem, Nada Saif, Samia Abdullah
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引用次数: 0

摘要

在以太坊网络上,用户通过各种不同的帐户相互通信。伪匿名在网络上被强制执行,以提供最高级别的隐私。通过使用在网络上从事欺诈活动的帐户,这种隐私可能会被利用。与其他加密货币一样,以太坊区块链可能会被一些欺诈活动所利用,如庞氏骗局、网络钓鱼或首次代币发行(ICO)退出等。然而,识别具有异常账户特征的参数并不是一件容易的事情,需要一种智能的方法来区分正常和欺诈活动。因此,本文试图通过使用机器学习技术来引入一种可以检测以太坊欺诈账户的强大方法来解决这个问题。我们对收集的4,681个实例的数据集以及2179个欺诈账户和2,502个正常账户使用了k -最近邻、随机森林和XGBoost。XGBoost、RF和KNN技术的平均准确率分别为96.80%、94.8%和87.85%,平均AUC分别为0.995、0.99和0.93。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fraudulent Account Detection in the Ethereum’s Network Using Various Machine Learning Techniques
On the Ethereum network, users communicate with one another through a variety of different accounts. Pseudo-anonymity was enforced over the network to provide the highest level of privacy. By using accounts that engage in fraudulent activity across the network, such privacy may be exploited. Like other cryptocurrencies, Ethereum blockchain may exploited with several fraudulent activities such as Ponzi schemes, phishing, or Initial Coin Offering (ICO) exits, etc. However, the identification of parameters with abnormal account characteristics is not an easy task and requires an intelligent approach to distinguish between normal and fraudulent activities. Therefore, this paper has attempted to solve this a problem by using machine learning techniques to introduce a robust approach that can detect fraudulent accounts on Ethereum. We have used a K-Nearest Neighbor, Random Forest and XGBoost over a collected dataset of 4,681 instances along with 2,179 fraudulent accounts associated and 2,502 regular accounts. The XGBoost, RF, and KNN techniques achieved average accuracies of 96.80 %, 94.8 8%, and 87.85% and an average AUC of 0.995, 0.99 and 0.93, respectively.
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