Accounting Fraud Detection: Is it Possible to Quantify Undiscovered Cases?

A. Wuerges, Jose Alonso Borba
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引用次数: 16

Abstract

Accounting fraud is defined as intentional misstatement of financial reports, in violation of generally accepted accounting principles, with the objective of making certain people act in detriment to their best interests. It is possible to identify the determinants of fraud using an econometric model, but the dependent variable (occurrence of fraud in a given company) is vulnerable to misclassification: Not every case of fraud will be detected, thus false negatives are possible. This paper estimates the percentage of undiscovered frauds and also estimates a probit model to detect fraud in US companies. The dependent variable was built using the instances of fraud discovered by the Securities and Exchange Commission (SEC). The model was estimated only with frauds that occurred between 1998 and 2002 (since many cases of fraud from the last years are still unknown). The independent variables were chosen using the concept of fraud triangle. The financial statement data were obtained using Compustat. The results show that the likelihood of fraud is negatively related to the current ratio, to the cash change (scaled by total assets) and to the fixed assets (also scaled by total assets). Companies that changed their auditors or receive a qualified auditing report are more susceptible to fraud. The probability that a case of fraud is not detected was estimated as 97.61%; this means just a small part of fraud cases are discovered by the SEC.
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会计欺诈检测:是否有可能量化未被发现的案例?
会计欺诈被定义为违反公认会计原则,故意错报财务报告,目的是使某些人的行为损害其最大利益。使用计量经济模型可以确定欺诈的决定因素,但是因变量(在给定公司中欺诈的发生)容易被错误分类:并不是每个欺诈案例都会被检测到,因此可能会出现假阴性。本文估计了未被发现的欺诈的百分比,并估计了一个probit模型来检测美国公司的欺诈行为。因变量是使用美国证券交易委员会(SEC)发现的欺诈实例建立的。该模型仅对发生在1998年至2002年之间的欺诈进行了估计(因为过去几年的许多欺诈案件仍然未知)。使用欺诈三角的概念选择自变量。财务报表数据是使用Compustat获取的。结果表明,欺诈的可能性与流动比率、现金变化(按总资产比例)和固定资产(也按总资产比例)呈负相关。更换审计师或收到合格审计报告的公司更容易发生欺诈。欺诈案件未被发现的概率估计为97.61%;这意味着只有一小部分欺诈案件被SEC发现。
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