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Keywords: Reward
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Journal Articles
Recognize and thrive: predicting employees’ satisfaction towards fairness in reward and recognition system using explainable machine learning and text mining
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Global Knowledge, Memory and Communication (2026) 75 (5-6): 2312–2335.
Published: 27 August 2024
... performers believe that company’s reward and recognition (R&R) system is fair and equal. This study aims to use an explainable machine learning (eXML) model to develop a prediction algorithm for employee satisfaction with the fairness of R&R systems. Design/methodology/approach The current study...
