首页> 外文期刊>International journal of intelligent systems in accounting, finance & management >A GENETIC ALGORITHM APPROACH TO DETECTING TEMPORAL PATTERNS INDICATIVE OF FINANCIAL STATEMENT FRAUD
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A GENETIC ALGORITHM APPROACH TO DETECTING TEMPORAL PATTERNS INDICATIVE OF FINANCIAL STATEMENT FRAUD

机译:确定财务报表欺诈的时间模式的遗传算法

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This study presents a genetic algorithm approach to detecting financial statement fraud. The study uses a sample comprising a target class of 51 companies accused by the Securities and Exchange Commission of improperly recognizing revenue and a peer class of 339 companies matched on industry and size (revenue). Variables include 76 comparative metrics, based on specific financial metrics and ratios that capture company performance in the context of historical and industry performance, and nine company characteristics. Time-based patterns detected by the genetic algorithm accurately classify 63% of the target class companies and 95% of the peer class companies.
机译:这项研究提出了一种遗传算法方法来检测财务报表欺诈。这项研究使用了一个样本,该样本包括美国证券交易委员会(Securities and Exchange Commission)指责的51家目标公司类别,这些公司的目标是不正确地确认收入,而根据行业和规模(收入)匹配的339家公司的同行类别。变量包括76个比较指标(基于特定的财务指标和比率,这些指标可在历史和行业绩效的背景下捕获公司绩效)以及九个公司特征。遗传算法检测到的基于时间的模式将63%的目标类别公司和95%的对等类别公司准确分类。

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