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A MONEY LAUNDERING RISK EVALUATION METHOD BASED ON DECISION TREE

机译:基于决策树的洗钱风险评估方法

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Money laundering (ML) involves moving illicit funds, which may be linked to drug trafficking or organized crime, through a series of transactions or accounts to disguise origin or ownership.China is facing severe challenge on money laundering with an estimated 200 billion RMB laundered annually.Decision tree method is used in this paper to create the determination rules of the money laundering risk by customer profiles of a commercial bank in China.A sample of twenty-eight customers with four attributes is used to induced and validate a decision tree method.The result indicates the effectiveness of decision tree in generating AML rules from companies' customer profiles.The anti-money laundering system in small and middle commerical bank in China is highly needed.
机译:洗钱(ML)涉及通过一系列交易或账户伪装来源或所有权来转移可能与毒品贩运或有组织犯罪有关的非法资金。中国在洗钱方面面临严峻挑战,估计每年洗钱2000亿元人民币本文采用决策树方法,根据中国某商业银行的客户资料建立洗钱风险的确定规则。以一个具有四个属性的28个客户为样本,对决策树方法进行了归纳和验证。结果表明,决策树在根据公司客户档案生成反洗钱规则方面的有效性。迫切需要中国中小型商业银行的反洗钱系统。

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