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Isolation-based conditional anomaly detection on mixed-attribute data to uncover workers' compensation fraud

机译:基于混合属性数据的基于隔离的条件异常检测,以发现工人的赔偿欺诈

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摘要

development of new data analytical methods remains a crucial factor in the combat against insurance fraud. Methods rooted in the research field of anomaly detection are considered as promising candidates for this purpose. Commonly, a fraud data set contains both numeric and nominal attributes, where, due to the ease of expressiveness, the latter often encodes valuable expert knowledge. For this reason, an anomaly detection method should be able to handle a mixture of different data types, returning an anomaly score meaningful in the context of the business application.
机译:开发新的数据分析方法仍然是打击保险欺诈的关键因素。植根于异常检测研究领域的方法被认为是有前途的候选方法。通常,欺诈数据集包含数字属性和名义属性,其中,由于易于表达,后者经常编码有价值的专家知识。因此,异常检测方法应能够处理不同数据类型的混合,并返回在业务应用程序上下文中有意义的异常评分。

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