Blockchain systems and cryptocurrencies have exploded in popularity over the past decade, and with this growing user base, the number of cryptocurrency scams has also surged. Given the graphical structure of blockchain networks and the abundance of data generated on these networks, we use graph mining techniques to extract essential information on transactions and apply Benford's Law to extract distributional information on address transactions. We then apply a gradient-boosting tree model to predict fraudulent addresses. Our results show that our method can detect scams with reasonable accuracy and that the features generated based on Benford's Law are the most significant features.
翻译:过去十年来,封锁链系统和加密系统受到欢迎,随着用户基础的不断增长,加密货币骗局的数量也急剧增加。鉴于链条网络的图形结构以及这些网络产生的大量数据,我们使用图形采矿技术提取交易的基本信息,并运用本福德法提取地址交易的分发信息。然后我们采用梯度加速树模型来预测欺诈地址。我们的结果表明,我们的方法可以以合理的准确性探测骗局,而根据班福德法则产生的特征则是最重要的特征。