首页> 外文期刊>International journal of intelligent systems in accounting, finance & management >CLASSIFICATION TECHNIQUES FOR THE IDENTIFICATION OF FALSIFIED FINANCIAL STATEMENTS: A COMPARATIVE ANALYSIS
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CLASSIFICATION TECHNIQUES FOR THE IDENTIFICATION OF FALSIFIED FINANCIAL STATEMENTS: A COMPARATIVE ANALYSIS

机译:确认财务报表的分类技术:比较分析

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摘要

In this study, I develop 10 alternative classification models using logit analysis, discriminant analysis, support vector machines, artificial neural networks, probabilistic neural networks, nearest neighbours, UTADIS and MHDIS for the detection of falsified financial statements. The models are developed using financial and nonfi-nancial data. The sample includes 398 financial statements, half of which were assigned a qualified audit opinion. I compare these alternatives methods using out-of-time and out-of-sample tests. The results are used to derive conclusions on the performance of the methods and to investigate the potential of developing models that will assist auditors in identifying fraudulent financial statements.
机译:在这项研究中,我使用logit分析,判别分析,支持向量机,人工神经网络,概率神经网络,最近的邻居,UTADIS和MHDIS开发了10种替代分类模型,用于检测伪造的财务报表。这些模型是使用财务和非财务数据开发的。该样本包括398份财务报表,其中一半分配了合格的审计意见。我使用超时和样本外测试来比较这些替代方法。结果可用于得出有关方法性能的结论,并调查开发模型的潜力,这些模型将有助于审计师识别欺诈性财务报表。

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