Predicting employee absenteeism for cost effective interventions

作者:

Highlights:

• A flexible framework for employee absenteeism prediction to support HR decisions.

• We predict employees at risk of absence without having health variables.

• We use cost-sensitive learning to optimise investment into well-being interventions.

• Conceptual model of employee sickness absence misclassification costs is developed.

• We showcase the application of our conceptual model and evaluate using cost metrics.

摘要

This paper describes a decision support system designed for a Belgian Human Resource (HR) and Well-Being Service Provider. Their goal is to improve health and well-being in the workplace, and to this end, the task is to identify groups of employees at risk of sickness absence who can then be targeted with interventions aiming to reduce or prevent absences. To facilitate deployment, we apply a range of existing machine-learning methods to obtain predictions at monthly intervals using real HR and payroll data that contains no health-related predictors. We model employee absence as a binary classification problem with loss asymmetry and conceptualise a misclassification cost matrix of employee sickness absence. Model performance is evaluated using cost-based metrics, which have intuitive interpretation. We also demonstrate how this problem can be approached when costs are unknown. The proposed flexible evaluation procedure is not restricted to a specific model or domain and can be applied to address other HR analytics questions when deployed. Our approach of considering a wider range of methods and cost-based performance evaluation is novel in the domain of absenteeism prediction.

论文关键词:Cost-sensitive learning,Classification,HR analytics,Absenteeism prediction

论文评审过程:Received 8 August 2020, Revised 22 February 2021, Accepted 24 February 2021, Available online 27 February 2021, Version of Record 13 June 2021.

论文官网地址:https://doi.org/10.1016/j.dss.2021.113539