期望最大化算法在反洗钱可疑交易检测中的有效性探索

Zhiyuan Chen, Le Dinh Van Khoa, A. Nazir, Ee Na Teoh, Ettikan Kandasamy Karupiah
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引用次数: 15

摘要

洗钱是指将非法经营所得伪装起来,使其变得合法的活动。它留下了严重的后果,可能导致经济腐败。我们进行了广泛的研究,以探讨侦测可疑交易的适当方法。在聚类方法领域,传统的研究只关注k-means作为迄今为止最好的技术。另一方面,虽然属于同一类别,但在反洗钱(AML)中运用期望最大化(EM)的研究较少。本研究的目的是利用EM在可疑交易检测中的优势。本研究中使用的数据是通过马来西亚一家当地银行获得的。采用遗传搜索和最优优先搜索算法选择关键属性子集。结果表明,聚类阶段所需的关键字段包括金额、借贷数量及其总和。本研究的结果表明,EM在检测正确的可疑交易和正常交易方面优于传统的AML聚类方法k-means。这为EM在该领域的应用奠定了基础。然而,为了明确EM在“反洗钱”中的有效性,需要使用其他银行的不同数据集进行进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration of the effectiveness of expectation maximization algorithm for suspicious transaction detection in anti-money laundering
Money laundering refers to activities that disguise money receive through illegal operations and make them become legitimate. It leaves serious consequence that may lead to economy corruption. Extensive research has been conducted to investigate proper solution for suspicious transactions detection. In the realm of clustering approaches, traditional research only concentrate on k-means as the best technique so far. On the other hand, although belongs to the same class, there is a lack of studies conducted in employing Expectation Maximization (EM) for Anti-Money Laundering (AML). The objective of this study is to exploit the advantages of EM for suspicious transaction detection. Data used in this study was obtained through a local bank in Malaysia. Subsets of crucial attributes were selected using genetic search and best first search algorithm. Results indicate that critical fields required for clustering phase include amount, number of credit & debit as well as its sum. The outcome of this study shows that EM overwhelmed traditional clustering method k-means for AML in terms of detecting correct suspicious and normal transactions. This lays the groundwork of employing EM in this field. However, further research is needed using different dataset of other banks in order to clarify the effectiveness of EM in AML.
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