利用卷积神经网络分析比特币交易以检测非法交易

K. Kolesnikova, O. Mezentseva, Tleuzhan Mukatayev
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引用次数: 6

摘要

这篇文章专门讨论虚拟货币,这是一个快速增长和流行的市场。调查发现,对于虚拟货币,特别是加密货币比特币,存在不受控制的洗钱问题。伪匿名化和非法交换者的存在促进了这一点。为了解决这一问题,本文采用了卷积神经网络中的层组合方法,具体表现为堆栈分层。在CNN网络中,卷积层和直立层通常堆叠在一个堆栈中,一个在另一个之上。本文提出了一种比特币交易分析模型,以识别与洗钱相关的异常情况。针对这种模型,提出了一种组合方法,该方法由随机森林方法组成,并通过图卷积网络的信息(即嵌入顶点)进行增强。通过该模型,我们获得了一些指标,表明可能存在的影子交易占整个市场的2-3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Bitcoin Transactions to Detect Illegal Transactions Using Convolutional Neural Networks
The article is devoted to virtual currencies, which is a fast growing and popular market. It was found that for virtual currencies, in particular, for the cryptocurrency Bitcoin, there is a problem of uncontrolled money laundering. This is facilitated by pseudo-anonymization and the presence of illegal exchangers. In this paper, to solve this problem, the method of combining layers in convolutional neural networks is used, which is manifested in the stack layering.In CNN networks, convolutional and erecting layers are usually stacked in a stack, one above the other. The paper proposes a model of Bitcoin transaction analysis to identify anomalies related to money laundering. As such a model, it is proposed to take a combined method, which consists of the method of random forests, enhanced by information from the graph convolutional network, ie, embedded vertices. As a result of the model, we obtained indicators that indicate the presence of possible shadow transactions in the amount of 2-3% of the total market.
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