The Value of Using A Novel Decision Support Risk Assessment Tool When Investigating Internal Theft in a Gaming Establishment
—A Case Study
Keywords:
casino employees, internal theft, risk assessment, decision support tool, operational investigationsAbstract
The average US gaming establishment with at least 1,000 employees loses roughly $3.3 million annually as a result of employee fraud. Current internal theft identification strategies and methodologies are neither quick nor sufficient enough to curtail the financial damage, as it typically takes 12-16 months to detect and resolve most internal theft issues. The current applied research case study examines a novel artificial intelligence (AI)-enabled voice screening tool and describes its capability in identifying previously undetected internal theft knowledge and involvement within a particular employee population. Compellingly, 95.5% of risk-flagged interviews were confirmed and verified. In the total sample of 99 consenting study volunteers with no known history of internal theft, 0% initially admitted to a fraudulent offense. During the automated telephone interview, 3% of the entire subject pool provided a total of four admissions to either knowing about or being involved in internal theft. During the posttest follow-up interview, 16.2% of the subject pool made additional knowledge and/or involvement-based disclosures, germane to theft onsite. Critically, as a result of the automated interview process, previously undiscovered internal theft details were identified. Finally, this study’s description of specific characteristics and predictive qualities of high-risk employees should benefit gaming establishment security and investigative teams alike.

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Copyright (c) 2021 Alex Martin, John Zaal, Mario Azevedo, Christine Dutra

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.