打击比特币洗钱问题的不同技术和算法

Mariam Alnaqbi, Mariam Mohamed Al-Ali, Mahra Alremeithi, Maryam Yaqoub Al Ali, Deepa Pavithran
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引用次数: 0

摘要

比特币的出现在价值和名气上都在继续增长,因为它是第一个去中心化的加密货币。许多研究表明,犯罪分子正在利用比特币来洗钱,这些洗钱来自非法活动或网络犯罪。本文旨在通过各种方法提供防止比特币洗钱的检测技术的比较,包括图论,防止混合服务,以及机器学习技术,包括随机森林,浅神经网络,可优化决策树,Bagging, Boosting算法以及结合随机森林,Bagging和Extra Tree的集成学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Different Techniques And Algorithms To Combat The Issue Of Money Laundering In Bitcoin
The emergence of Bitcoin has continued to grow both in value and fame, as it was introduced as the first decentralized cryptocurrency. Many studies have shown that criminals are exploiting bitcoin by using it to launder their money, which originates from illegal activities or cybercrime. This paper aims at providing a comparison of detection techniques for preventing money laundering in bitcoin through various methods including graph theory, prevention of mixing services, and machine learning techniques including Random Forest, Shallow Neural Networks, optimizable Decision Trees, Bagging, Boosting algorithms, and Ensemble learning combining Random Forest, Bagging and Extra Tree.
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