金融科技领域加密货币反洗钱知识图谱的人工智能

Min-Yuh Day
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引用次数: 5

摘要

近年来,加密货币反洗钱成为一个重要的研究课题。结合人工智能技术的法律实证研究受到了相当大的关注。如何在国际防范和控制加密货币洗钱案件和判决的小样本中构建加密货币反洗钱知识图谱,成为更好地理解犯罪模式与新兴金融技术之间关系的关键问题。在本研究中,我们提出了基于人工智能元学习的少镜头学习模型来构建加密货币反洗钱知识图谱。本研究的研究方法是针对各种犯罪中滥用电子支付工具和加密货币的原因和背景、金额、犯罪类型以及近年来的增长趋势进行分析。本研究的贡献在于,提出的金融科技领域AI加密货币反洗钱知识图谱可以应用于法律文件的内容分析和问答系统。
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Artificial intelligence for knowledge graphs of cryptocurrency anti-money laundering in fintech
Cryptocurrency anti-money laundering has become an important research topic in recent years. Legal empirical research combined with AI technology has received considerable attention. How to construct a knowledge graph of cryptocurrency anti-money laundering in a small sample of international cases and judgments on the prevention and control of cryptocurrency money laundering has become an essential issue for a better understanding of the relationship between the crime patterns and emerging financial technologies. In this study, we proposed artificial intelligence meta-learning with a few-shot learning model to construct a cryptocurrency anti-money laundering knowledge graph. The research method of this study aims at the abuse of electronic payment tools and cryptocurrency in various crimes by analyzing the causes and background, the amount of money, the type of crime, and the growth trend in recent years. The contribution of this study is that the proposed AI cryptocurrency anti-money laundering knowledge graphs in fintech can be applied to the content analysis and question-and-answer system of legal documents.
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