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唐朱昌
唐朱昌
教授,博士生导师。复旦大学中国反洗钱研究中心首任主任,复旦大学俄...
严立新
严立新
复旦大学国际金融学院教授,中国反洗钱研究中心执行主任,陆家嘴金...
陈浩然
陈浩然
复旦大学法学院教授、博士生导师;复旦大学国际刑法研究中心主任。...
何 萍
何 萍
华东政法大学刑法学教授,复旦大学中国反洗钱研究中心特聘研究员,荷...
李小杰
李小杰
安永金融服务风险管理、咨询总监,曾任蚂蚁金服反洗钱总监,复旦大学...
周锦贤
周锦贤
周锦贤先生,香港人,广州暨南大学法律学士,复旦大学中国反洗钱研究中...
童文俊
童文俊
高级经济师,复旦大学金融学博士,复旦大学经济学博士后。现供职于中...
汤 俊
汤 俊
武汉中南财经政法大学信息安全学院教授。长期专注于反洗钱/反恐...
李 刚
李 刚
生辰:1977.7.26 籍贯:辽宁抚顺 民族:汉 党派:九三学社 职称:教授 研究...
祝亚雄
祝亚雄
祝亚雄,1974年生,浙江衢州人。浙江师范大学经济与管理学院副教授,博...
顾卿华
顾卿华
复旦大学中国反洗钱研究中心特聘研究员;现任安永管理咨询服务合伙...
张平
张平
工作履历:曾在国家审计署从事审计工作,是国家第一批政府审计师;曾在...
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上传时间: 2024-05-04      浏览次数:99次
Blockchain researchers use AI to spot Bitcoin money laundering

 

https://www.finextra.com/newsarticle/44079/blockchain-researchers-use-ai-to-spot-bitcoin-money-laundering

 

Researchers from Elliptic, IBM Watson and MIT have used AI to detect money laundering on the Bitcoin blockchain.

 

Back in 2019, blockchain analytics firm Elliptic published research with the MIT-IBM Watson AI Lab showing how a machine learning model could be trained to identify Bitcoin transactions made by illicit actors, such as ransomware groups or darknet marketplaces.

 

Now the partners have put out new research applying new techniques to a much larger dataset, containing nearly 200 million transactions. Rather than identifying transactions made by illicit actors, a machine learning model was trained to identify “subgraphs”, chains of transactions that represent bitcoin being laundered.

 

Identifying these subgraphs rather than illicit wallets let the researchers focus on the “multi-hop” laundering process more generally rather than the on-chain behaviour of specific illicit actors.

 

Working with a crypto exchange, the researchers tested their technique: of 52 money laundering subgraphs predicted and which ended with deposits to the exchange, 14 were received by users who had already been flagged as being linked to money laundering.

 

On average, less than one in 10,000 accounts are flagged in this way "suggesting that the model performs very well," say the team. The researchers are now making their underlying data publicly available.

 

Says Elliptic: "This novel work demonstrates that AI methods can be applied to blockchain data to identify illicit wallets and money laundering patterns, which were previously hidden from view.

 

"This is made possible by the inherent transparency of blockchains and demonstrates that cryptoassets, far from being a haven for criminals, are far more amenable to AI-based financial crime detection than traditional financial assets."