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Thompson-Tau outlier detection method for Detecting Abnormal Data of Listed Pharmaceutical companies in China

机译:Thompson-Tau异常值检测中国上市药品公司异常数据的检测方法

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摘要

Based on the quarterly financial statements from 2003 to 2014 of a listed pharmaceutical company with financial fraud records, this paper partitions the dataset of financial ratios into abnormal and normal groups by using Thomsontau outlier detection method. Combined with the information revealed by China Securities Regulatory Commission (CSRC), in the empirical research we find that type I error rate and type II error rate are low and the overall accuracy rate and the accuracy rate of detected financial fraud data are relatively high. The results show that Thompson-tau outlier detection method is credible and useful for clustering financial data. From the detected outliers, we can further find the fraud financial data.
机译:根据2003年至2014年的季度财务报表,通过金融欺诈记录,通过使用Thomsontau异常检测方法将财务比率的数据集分配到异常和正常组。结合中国证券监督管理委员会(CSRC)透露的信息,在实证研究中,我们发现I型错误率和II型错误率较低,而且检测到的金融欺诈数据的总体精度率和精度率相对较高。结果表明,Thompson-Tau异常值检测方法是可信的,可用于聚类财务数据。从检测到的异常值中,我们可以进一步查找欺诈金融数据。

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