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Using relational knowledge discovery to prevent securities fraud

机译:使用关系知识发现来防止证券欺诈

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We describe an application of relational knowledge discovery to a key regulatory mission of the National Association of Securities Dealers (NASD). NASD is the world's largest private-sector securities regulator, with responsibility for preventing and discovering misconduct among securities brokers. Our goal was to help focus NASD's limited regulatory resources on the brokers who are most likely to engage in securities violations. Using statistical relational learning algorithms, we developed models that rank brokers with respect to the probability that they would commit a serious violation of securities regulations in the near future. Our models incorporate organizational relationships among brokers (e.g., past coworker), which domain experts consider important but have not been easily used before now. The learned models were subjected to an extensive evaluation using more than 18 months of data unseen by the model developers and comprising over two person weeks of effort by NASD staff. Model predictions were found to correlate highly with the subjective evaluations of experienced NASD examiners. Furthermore, in all performance measures, our models performed as well as or better than the handcrafted rules that are currently in use at NASD.
机译:我们描述了将关系知识发现应用于全国证券交易商协会(NASD)的关键监管任务的应用。 NASD是全球最大的私营证券监管机构,负责防止和发现证券经纪人之间的不当行为。我们的目标是将NASD有限的监管资源集中在最有可能参与证券违规行为的经纪人身上。使用统计关系学习算法,我们开发了一种模型,该模型针对经纪人在不久的将来会严重违反证券法规的可能性进行排名。我们的模型结合了经纪人(例如,过去的同事)之间的组织关系,领域专家认为这些关系很重要,但迄今为止却不容易使用。对学习的模型进行了广泛的评估,使用了模型开发人员看不见的超过18个月的数据,并且由NASD员工花费了两个多星期的时间。发现模型预测与经验丰富的NASD审查员的主观评估高度相关。此外,在所有性能指标中,我们的模型在性能上都优于或优于NASD当前使用的手工规则。

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