论文标题

检查l:比特币中自制的GNN节点嵌入洗钱检测

Inspection-L: Self-Supervised GNN Node Embeddings for Money Laundering Detection in Bitcoin

论文作者

Lo, Wai Weng, Kulatilleke, Gayan K., Sarhan, Mohanad, Layeghy, Siamak, Portmann, Marius

论文摘要

犯罪分子在使用加密货币(例如比特币)进行洗钱方面变得越来越有经验。使用加密货币可以隐藏犯罪身份,并通过其刑事数字钱包转移了数亿美元的肮脏资金。但是,这被认为是悖论,因为加密货币是开源智能的金矿,在进行法医分析时为执法机构提供了更多的权力。本文提出了基于自我监督的深图信息(DGI)和图形同构网络(GIN)的图形神经网络(GNN)框架,具有监督的学习算法,即随机森林(RF),以检测用于反个人票房(AML)的非法交易。据我们所知,我们的建议是第一个将自我监督的GNN应用于比特币中AML问题的提议。在椭圆数据集上评估了所提出的方法,并表明我们的方法在关键分类指标方面优于最先进的方法,这证明了在检测非法加密货币交易中自我监督的GNN的潜力。

Criminals have become increasingly experienced in using cryptocurrencies, such as Bitcoin, for money laundering. The use of cryptocurrencies can hide criminal identities and transfer hundreds of millions of dollars of dirty funds through their criminal digital wallets. However, this is considered a paradox because cryptocurrencies are goldmines for open-source intelligence, giving law enforcement agencies more power when conducting forensic analyses. This paper proposed Inspection-L, a graph neural network (GNN) framework based on a self-supervised Deep Graph Infomax (DGI) and Graph Isomorphism Network (GIN), with supervised learning algorithms, namely Random Forest (RF), to detect illicit transactions for anti-money laundering (AML). To the best of our knowledge, our proposal is the first to apply self-supervised GNNs to the problem of AML in Bitcoin. The proposed method was evaluated on the Elliptic dataset and shows that our approach outperforms the state-of-the-art in terms of key classification metrics, which demonstrates the potential of self-supervised GNN in the detection of illicit cryptocurrency transactions.

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