Abstract (ENG): |
Unethical behavior of salespeople endangers a company’s reputation, customer relationships, and performance. In response to the dangers of undetected red flags, defined as salespeople who have committed fraud regarding dealings with customers, prior research provides a solid foundation for singular antecedents of red flags through survey or experimental data. To gather insights from real-world phenomena, we employ an empirics-first approach and use machine learning to build theory and establish a comprehensive view of drivers of red flags and the manner in which they interact. We leverage data from a major insurance company which objectively tracked and analyzed their salespeople’s red flags. Results of the empirical study comprising 316 salespeople both confirms established but also uncovers previously hidden drivers of red flags. Thereby this study extends salespeople’s unethical behavior research and provides the means with which the black-box of machine learning can be opened. |
Citation: |
Pöpping, Nora and Alavi, Sascha and Friess, Maximilian and Schmitz, Christian
(2024)
Red Flags in Sales: Using Big Data and Machine Learning to Predict Salespeople’s Fraud.
In: (Proceedings of the) AMA Winter Academic Conference "Unlocking our Potential", February, 23-25, 2024, St. Pete Beach, FL, USA, pp. 904-907.
(AMA Educators Proceedings; 35, I).
ISBN 9781713893400
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