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<title>Industrial and Systems Engineering</title>
<link>https://aurora.auburn.edu/handle/11200/44258</link>
<description/>
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<rdf:li rdf:resource="https://aurora.auburn.edu/handle/11200/49436"/>
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<dc:date>2026-04-15T08:26:32Z</dc:date>
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<item rdf:about="https://aurora.auburn.edu/handle/11200/49436">
<title>A Bayesian Approach to Detect the Firms with Material Weakness in Internal Control</title>
<link>https://aurora.auburn.edu/handle/11200/49436</link>
<description>A Bayesian Approach to Detect the Firms with Material Weakness in Internal Control
Capturing of relevant patterns in company’s financial data and the implications on the reporting are important for&#13;
various financial statement users to identify the triggers of the significant deficiencies and material weaknesses. The&#13;
objective of this study is to construct a company-specific risk score for the companies’ internal weaknesses, as well&#13;
as to uncover the conditional relations between the independent predictors of firms’ material weaknesses. To do so,&#13;
Tree Augmented Naive Bayes (TAN) and Logistic Regression (LR) algorithms are employed to analyze the data&#13;
obtained from COMPUSTAT (Research Insight) for one year before the Material Weakness in Internal Control&#13;
(MWIC) disclosure on several operating and financial ratios such as total asset turnover, profitability, capital&#13;
intensity, size, current ratio, and operating performance. The proposed TAN method provides novel information on&#13;
the interactions among the predictors and the conditional probability of MWIC for a given set of relevant firm&#13;
characteristics.
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