Money laundering is one of the most relevant criminal activities today, due to its potential to cause massive financial losses to governments, banks, etc. We propose DELATOR, a new CAAT (computer-assisted audit technology) to detect money laundering activities based on neural network models that encode bank transfers as a large-scale temporal graph. In collaboration with a Brazilian bank, we design and apply an evaluation strategy to quantify DELATOR's performance on historic data comprising millions of clients. DELATOR outperforms an off-the-shelf solution from Amazon AWS by 18.9% with respect to AUC. We conducted real experiments that led to discovery of 8 new suspicious among 100 analyzed cases, which would have been reported to the authorities under the current criteria.
翻译:洗钱是当今最相关的犯罪活动之一,因为它有可能给政府、银行等造成巨大的财政损失。 我们建议采用新的计算机辅助审计技术DELATOR(计算机辅助审计技术),根据将银行转账编码为大规模时间图的神经网络模型,检测洗钱活动。我们与巴西一家银行合作,设计并运用评价战略,量化DELATOR在由数百万客户组成的历史数据方面的表现。DELATOR比亚马逊AWS的现成解决办法高出AUC公司18.9%。我们进行了真正的实验,在100个已分析的案件中发现了8个新的可疑案件,根据目前的标准,这些案例本来会报告当局。