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Deep learning for detecting financial statement fraud

机译:侦查财务报表欺诈的深度学习

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Financial statement fraud is an area of significant consternation for potential investors, auditing companies, and state regulators. The paper proposes an approach for detecting statement fraud through the combination of information from financial ratios and managerial comments within corporate annual reports. We employ a hierarchical attention network (HAN) to extract text features from the Management Discussion and Analysis (MD &A) section of annual reports. The model is designed to offer two distinct features. First, it reflects the structured hierarchy of documents, which previous approaches were unable to capture. Second, the model embodies two different attention mechanisms at the word and sentence level, which allows content to be differentiated in terms of its importance in the process of constructing the document representation. As a result of its architecture, the model captures both content and context of managerial comments, which serve as supplementary predictors to financial ratios in the detection of fraudulent reporting. Additionally, the model provides interpretable indicators denoted as "red-flag" sentences, which assist stakeholders in their process of determining whether further investigation of a specific annual report is required. Empirical results demonstrate that textual features of MD&A sections extracted by HAN yield promising classification results and substantially reinforce financial ratios.
机译:财务报表欺诈是潜在投资者,审计公司和国家监管机构的重视领域。本文提出了一种通过在公司年度报告中的财务比率和管理意见的信息组合来检测陈述欺诈的方法。我们采用了分层关注网络(汉语)以从年度报告的管理讨论和分析(MD&A)部分中提取文本特征。该模型旨在提供两个不同的功能。首先,它反映了以前的文档的结构化层次,以前的方法无法捕获。其次,该模型体现了单词和句子级别的两个不同的关注机制,这允许内容在构建文档表示的过程中的重要性方面进行区分。由于其架构,该模型捕获了管理评论的内容和背景,该内容和上下文作为在欺诈报告中检测到财务比率的补充预测因素。此外,该模型提供了可解释的指标,表示为“Red-Flag”句子,该句子可以帮助利益相关者确定是否需要进一步调查特定年度报告的进一步调查。经验结果表明,汉族提取的MD和部分的文本特征产生了有望的分类结果,大大加强了金融比率。

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