自组织模糊和MLP方法检测虚假财务报告

Ehsan H. Feroz, T. Kwon
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引用次数: 3

摘要

在会计和审计领域,由于此类事件的频率增加以及随之而来的诉讼费用,发现从事虚假财务报告的公司变得越来越重要。传统的统计工具,如合法和probit,在检测这些公司方面并不成功。我们使用了七个红旗,其中包括四个财务红旗和三个翻转红旗,以发现美国证券交易委员会(SEC)对虚假财务报告的调查目标。将神经网络和模糊集两种重要的非线性方法应用于SEC调查目标的检测,并与传统的统计方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-organizing fuzzy and MLP approaches to detecting fraudulent financial reporting
In the fields of accounting and auditing, detection of firms engaged in fraudulent financial reporting has become increasingly important, due to the increased frequency of such events and the attendant costs of litigation. Conventional statistical tools such as legit and probit have not been successful in detecting such firms. We employ seven redflags which are composed of four financial redflags and three turn over redflags in order to detect targets of the Securities and Exchange Commission's (SEC) investigation of fraudulent financial reporting. Two prominent nonlinear approaches, i.e. neural network and fuzzy sets, are applied to detection of SEC investigation targets and compared with the conventional statistical methods.
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