Detecting Financial Statement Fraud: An Alternative Evaluation of Automated Tools Using Portfolio Performance
Research output: Contribution to journal › Article › peer-review
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In: Journal of Forensic and Investigative Accounting, Vol. 16, No. 1, 06.2024.
Research output: Contribution to journal › Article › peer-review
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TY - JOUR
T1 - Detecting Financial Statement Fraud: An Alternative Evaluation of Automated Tools Using Portfolio Performance
AU - Yee, Amanda
AU - Gepp, Adrian
AU - Kumar, Kuldeep
AU - Todd, James
AU - Vanstone, Bruce
N1 - Open Access journal, can't find any info on copyright
PY - 2024/6
Y1 - 2024/6
N2 - This article investigates the effect of using financial statement fraud detection models in constructing investment portfolios. Three financial statement fraud detection models are recreated and used to inform portfolio construction. Portfolio performance is compared between two strategies investing in companies on the S&P 500 predicted to have the highest (lowest) likelihood of financial statement fraud according to three models. Investment performance under the two strategies and across the three models are assessed using Fama-French regressions over a trading period from 2003 to 2021 and during market shocks. The portfolio of companies with the highest likelihood of fraud underperforms, characterized by inadequate returns relative to risk exposures. In the case of low-likelihood firms, results are consistent with risk-reward expectations. Financial results were consistent across all three fraud models, indicating that each model effectively discriminates between companies predicted to exhibit financial statement fraud. This research investigates the effect of financial statement fraud risk on investment performance and provides an alternative evaluation of financial statement fraud detection models, complementing the traditional accounting analysis of such models.
AB - This article investigates the effect of using financial statement fraud detection models in constructing investment portfolios. Three financial statement fraud detection models are recreated and used to inform portfolio construction. Portfolio performance is compared between two strategies investing in companies on the S&P 500 predicted to have the highest (lowest) likelihood of financial statement fraud according to three models. Investment performance under the two strategies and across the three models are assessed using Fama-French regressions over a trading period from 2003 to 2021 and during market shocks. The portfolio of companies with the highest likelihood of fraud underperforms, characterized by inadequate returns relative to risk exposures. In the case of low-likelihood firms, results are consistent with risk-reward expectations. Financial results were consistent across all three fraud models, indicating that each model effectively discriminates between companies predicted to exhibit financial statement fraud. This research investigates the effect of financial statement fraud risk on investment performance and provides an alternative evaluation of financial statement fraud detection models, complementing the traditional accounting analysis of such models.
M3 - Article
VL - 16
JO - Journal of Forensic and Investigative Accounting
JF - Journal of Forensic and Investigative Accounting
IS - 1
ER -