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FEATURE EXTRACTION OF FRAUDULENT FINANCIAL REPORTING THROUGH UNSUPERVISED NEURAL NETWORKS

机译:通过未监督的神经网络提取欺诈性财务报告的功能

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摘要

The objective of this study is to apply an unsupervised neural network tool to analyze fraudulent financial reporting (FFR) by extracting distinguishing features from samples of groups of companies and converting them into useful information for FFR detection. This methodology can be used as a decision support tool to help build an FFR identification model or other financial fraud or financial distress scenarios. The three stages of the proposed quantitative analysis approach are as follows: the data-preprocessing stage; the clustering stage, which uses an unsupervised neural network tool known as a growing hierarchical self-organizing map (GHSOM) to cluster sample observations into subgroups with hierarchical relationships; and the feature-extraction stage, which uncovers common features of each subgroup via principle component analysis. This study uses the hierarchal topology mapping ability of a GHSOM to cluster financial data, and it adopts principal component analysis to determine common embedded features and fraud patterns. The results show that the proposed three-stage approach is helpful in revealing embedded features and fraud patterns, using a set of significant explanatory financial indicators and the proportion of fraud. The revealed features can be used to distinguish distinctive groups.
机译:这项研究的目的是通过从公司集团的样本中提取区别特征并将其转化为有用的信息以进行FFR检测,从而应用一种无监督的神经网络工具来分析欺诈性财务报告(FFR)。该方法可以用作决策支持工具,以帮助建立FFR识别模型或其他财务欺诈或财务困境方案。提出的定量分析方法的三个阶段如下:数据预处理阶段;聚类阶段,它使用一种称为增长型分层自组织图(GHSOM)的无监督神经网络工具,将样本观察结果聚类为具有分层关系的子组。特征提取阶段,通过主成分分析发现每个子组的共同特征。本研究使用GHSOM的层次拓扑映射功能对财务数据进行聚类,并采用主成分分析来确定常见的嵌入特征和欺诈模式。结果表明,建议的三阶段方法有助于使用一组重要的解释性财务指标和欺诈比例来揭示嵌入式功能和欺诈模式。揭示的功能可用于区分不同的组。

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