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A Model for Detecting Cryptocurrency Transactions with Discernible Purpose

机译:具有明确目的的加密货币交易检测模型

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The perpetration of financial fraud progresses parallel with the innovation in the field of finance. Consequently, the emergence of the blockchain technology has also manifested financial transaction obfuscation through the use of de-anonymization of the blockchain technology. This study identifies the suspicious transaction from Binance, an open-source cryptocurrency, through the means of defining and detecting the cryptocurrency wallets. By drawing the metadata of 38,526 wallets from etherscan.io, this study investigates the transactions with discernible purpose. This study performed an unsupervised learning expectation maximization (EM) algorithm to cluster the data set. Based on the features engineered from the unsupervised learning, we performed an anomaly detection using Random Forest (RF). In this study, we offered an insight into labeling the cryptocurrency wallets by providing a model for detecting the cryptocurrency with anomalous transactions. We advocate that labeling the wallets with discernible transactions may help financial institutions, private sectors, financial intelligence, and government agencies identify and detect the transactions with illicit activities.
机译:金融欺诈行为与金融领域的创新并行发展。因此,区块链技术的出现也通过使用区块链技术的去匿名化来体现对金融交易的混淆。这项研究通过定义和检测加密货币钱包的方式,从开源加密货币Binance中识别出可疑交易。通过从etherscan.io提取38,526个钱包的元数据,本研究调查了具有明确目的的交易。这项研究执行了无监督的学习期望最大化(EM)算法以对数据集进行聚类。基于无监督学习中设计的功能,我们使用随机森林(RF)进行了异常检测。在这项研究中,我们通过提供用于检测异常交易的加密货币的模型,提供了对标记加密货币钱包的见解。我们提倡用可识别的交易标记钱包,这可以帮助金融机构,私营部门,金融情报机构和政府机构识别和检测具有非法活动的交易。

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