基于位图索引决策树的洗钱监管风险评估

Vikas Jayasree, R.V. Siva Balan
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引用次数: 21

摘要

本文提出利用基于位图索引的决策树(BIDT)技术来评估洗钱中的适应性风险。首先,利用基于位图索引的决策树学习来推导知识树,从而确定公司的洗钱风险,提高可扩展性。bitt中的位图索引用于有效地访问大型银行数据库。在BIDT位图索引中,表中的帐户按顺序编号,使用每个键值、帐户编号和位图(字节数组)而不是行id列表。随后,BIDT算法使用“select”查询性能对and应用计数和按位逻辑操作。查询结果吻合准确,可以构建决策树,更准确地评价洗钱操作中的适应性风险。对于决策树的主账户根节点,只需对属性上构造的位图中“1”的总数进行计数即可获得总体频率,从而预测洗钱行为并评估风险因素率。实验采用监管风险率、假阳性率、风险识别时间等因素进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Money laundering regulatory risk evaluation using Bitmap Index-based Decision Tree

This paper proposes to evaluate the adaptability risk in money laundering using Bitmap Index-based Decision Tree (BIDT) technique. Initially, the Bitmap Index-based Decision Tree learning is used to induce the knowledge tree which helps to determine a company’s money laundering risk and improve scalability. A bitmap index in BIDT is used to effectively access large banking databases. In a BIDT bitmap index, account in a table is numbered in sequence with each key value, account number and a bitmap (array of bytes) used instead of a list of row ids. Subsequently, BIDT algorithm uses the “select” query performance to apply count and bit-wise logical operations on AND. Query result coincides exactly to build a decision tree and more precisely to evaluate the adaptability risk in the money laundering operation. For the root node, the main account of the decision tree, the population frequencies are obtained by simply counting the total number of “1” in the bitmaps constructed on the attribute to predict money laundering and evaluate the risk factor rate. The experiment is conducted on factors such as regulatory risk rate, false positive rate, and risk identification time.

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