Predicting Unplanned employee Absenteeism
DOI:
https://doi.org/10.47363/JAICC/ICAICC/2025(4)45Keywords:
Predicting Unplanned employee AbsenteeismAbstract
Unplanned employee absenteeism presents a critical operational and financial challenge to organizations across industries, with
U.S. employers losing approximately $225.8 billion annually. This paper proposes a specialized cloud-native machine learning
framework to forecast shift-level absenteeism 12-48 hours in advance. Our proposed approach would integrate diverse data sources
including historical attendance patterns, shift metadata, weather conditions, traffic data, and holiday proximity to create a robust
predictive model. This proposal details the significant business problem, specific tree-based modelling decisions, hyper parameter
optimization strategies, and implementation considerations that could enable substantial performance gains in enterprise workforce
management.
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