Publication | Closed Access
Finding Needles in a Haystack: Using Data Analytics to Improve Fraud Prediction
202
Citations
46
References
2016
Year
Fraud DetectionContinuous AuditingBehavior PredictionFinancial Statement FraudBusiness AnalyticsDecision AnalyticsFinancial Statement Fraud DetectionOptimization-based Data MiningAuditingData ScienceData MiningManagementFinancial AccountingStatisticsFinancial CrimeUsing Data AnalyticsPredictive AnalyticsAccountingKnowledge DiscoveryComputer ScienceFinanceFinancial AnalyticsBusinessData AnalyticsAccounting AuditFinancial StatementFraud PredictionBig Data
ABSTRACT Developing models to detect financial statement fraud involves challenges related to (1) the rarity of fraud observations, (2) the relative abundance of explanatory variables identified in the prior literature, and (3) the broad underlying definition of fraud. Following the emerging data analytics literature, we introduce and systematically evaluate three data analytics preprocessing methods to address these challenges. Results from evaluating actual cases of financial statement fraud suggest that two of these methods improve fraud prediction performance by approximately 10 percent relative to the best current techniques. Improved fraud prediction can result in meaningful benefits, such as improving the ability of the SEC to detect fraudulent filings and improving audit firms' client portfolio decisions.
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