使用数据分析来区分合法和非法的空壳公司

Milind Tiwari , Adrian Gepp , Kuldeep Kumar
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引用次数: 0

摘要

空壳公司可以是合法实体,但也可以用于洗钱等非法活动。空壳公司的用户包括非法军火商、贩毒集团、恐怖分子和网络罪犯,以及合法企业。为了帮助区分合法和非法使用空壳公司,我们开发了一个数据驱动的模型来检测被用于洗钱的空壳公司。我们使用了一种结合了图分析和监督机器学习的混合方法。所得到的检测模型具有令人印象深刻的分类准确率,范围在88.17 %和97.85 %之间。我们发现之前没有研究像我们的模型那样利用公开信息开发这样的模型来检测非法空壳公司。这项工作的受益者包括政府官员和合规专业人员,特别是会计师、税务官员和反腐败机构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using data analytics to distinguish legitimate and illegitimate shell companies
Shell companies can be a legitimate entity but can also been used for illicit activities such as money laundering. Users of shell companies have included illegal arms dealers, drug cartels, terrorists and cyber-criminals, as well as legitimate businesses. To assist in distinguishing between legitimate and illegitimate uses of shell companies, we develop a data-driven model to detect shell companies that are being used for money laundering. We use a hybrid approach combining graph analytics and supervised machine learning. The resulting detection models have an impressive classification accuracy ranging between 88.17 % and 97.85 %. We found no prior study that developed such models to detect illicit shell companies using publicly available information as done with our models. Beneficiaries of this work include government officials and compliance professionals, particularly accountants, tax officials and anti-corruption agencies.
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