结合自组织映射和K-means聚类检测虚假财务报表

Qingshan Deng, Guoping Mei
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引用次数: 38

摘要

当今的审计实践必须应对越来越多的虚假财务报表(FFS)。基于数据挖掘技术,研究人员进行了一些研究,发现该技术可以帮助审计人员完成FFS的检测任务。然而,在FFS检测中使用的大多数技术都是监督方法。聚类作为一种无监督数据挖掘技术,几乎从未被使用过。因此,考虑到FFS和自组织映射(SOM)的特点,设计了基于聚类有效性度量的SOM和K-means聚类相结合的模型。为了进行实验,选取了100份1999-2006年中国上市公司的财务报表作为实验样本,并按照一定的标准进行了研究。选取47个财务比率作为变量。将该模型应用于实测数据,得到了良好的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining self-organizing map and K-means clustering for detecting fraudulent financial statements
Auditing practices nowadays have to cope with an increasing number of fraudulent financial statements (FFS). Based on data mining techniques, researchers have made some studies and have found that the techniques can facilitate auditors in accomplishing the task of detection of FFS. However, most of the techniques used in the detection of FFS are supervised methods. Clustering, one kind of unsupervised data mining technique, has almost never been used. Therefore, considering the characteristics of FFS and self-organizing map(SOM), a model combining SOM and K-means clustering based on a clustering validity measure is designed. To carry out the experiment, 100 financial statements from Chinese listed companies during 1999–2006 are selected as experimental sample according to some specific standards. 47 financial ratios are chosen as variables. The model is applied to the data and good experimental results are obtained.
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