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Detecting Fraudulent Accounts on Blockchain: A Supervised Approach

机译:在区间的欺诈性账户:一种监督方法

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Applications of blockchain technologies got a lot of attention in recent years. They exceed beyond exchanging value and being a substitute for fiat money and traditional banking system. Nevertheless, being able to exchange value on a blockchain is at the core of the entire system and has to be reliable. Blockchains have built-in mechanisms that guarantee whole system's consistency and reliability. However, malicious actors can still try to steal money by applying well known techniques like malware software or fake emails. In this paper we apply supervised learning techniques to detect fraudulent accounts on Ethereum blockchain. We compare capabilities of Random Forests, Support Vector Machines and XGBoost classifiers to identify such accounts basing on a dataset of more than 300 thousands accounts. Results show that we are able to achieve recall and precision values allowing for the designed system to be applicable as an anti-fraud rule for digital wallets or currency exchanges. We also present sensitivity analysis to show how presented models depend on particular feature and how lack of some of them will affect the overall system performance.
机译:近年来,区块链技术的应用遭到了很多关注。他们超越交换价值,是菲亚特金钱和传统银行系统的替代品。尽管如此,能够在块链中交换价值是整个系统的核心,并且必须可靠。 Blockchains拥有内置机制,可保证整个系统的一致性和可靠性。然而,恶意演员仍然可以通过应用恶意软件软件或假电子邮件等众所周知的技术来试图窃取资金。在本文中,我们应用受监督的学习技术来检测Ethereum区块链的欺诈性账户。我们比较随机林,支持向量机和XGBoost分类器的功能,以确定基于300多万账户的数据集的此类帐户。结果表明,我们能够实现召回和精确值,允许设计的系统适用于数字钱包或货币交换的防欺诈规则。我们还提出了敏感性分析,以显示呈现的模型如何依赖于特定功能,以及其中一些人如何影响整体系统性能。

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