ledger:一种使用多模态无监督学习诊断区块链上非法地址的服务

Xiaoying Zhi, Yash Satsangi, Sean J. Moran, Shaltiel Eloul
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引用次数: 0

摘要

分布式账本技术通过实现去中心化金融生态系统而造福社会。然而,交易的伪匿名性质也为从个人诈骗到有组织犯罪的非法活动开辟了新的途径。目前查明涉及非法活动的地址(非法地址)的解决办法依赖商业情报服务,由于需要密集的调查工作,这种服务费用高昂。我们提出了一种自动实时服务,用于诊断比特币区块链上的非法地址。Ledgit完全基于公开可用的数据,并使用无监督聚类方法,将文本报告和区块链图的信息结合起来,为比特币地址参与非法活动分配风险评分。我们用标记的地址验证系统,在识别非法地址方面表现出高性能。最后,我们提供了一个直观的用户界面,通过图形和报告分析提供可访问的风险评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ledgit: A Service to Diagnose Illicit Addresses on Blockchain using Multi-modal Unsupervised Learning
Distributed ledger technology benefits society by enabling an ecosystem of decentralised finance. However the pseudo-anonymised nature of transactions has also been an enabler of new routes for illicit activities ranging from individual scams to organised crimes. Current solutions for identifying addresses involved in illicit activities (illicit addresses) rely on commercial intelligence services, which are costly due to the intensive investigative efforts required. We propose Ledgit, an automatic real-time service for diagnosing illicit addresses on the Bitcoin blockchain. Ledgit is based solely on publicly available data, and uses an unsupervised clustering method that combines information from textual reports and the blockchain graph to assign a risk score that a Bitcoin address is involved in illicit activities. We verify the system with labeled addresses, showing high performance in identifying illicit addresses. Finally, we provide an intuitive user interface that provides accessible risk assessment with graph and report analytics.
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