Treffer: Improving Nurse Scheduling Using a Random Forest Algorithm to Predict Employee Well-Being.

Title:
Improving Nurse Scheduling Using a Random Forest Algorithm to Predict Employee Well-Being.
Authors:
Séguin, Sara1,2 (AUTHOR) sara.seguin@uqac.ca, Villeneuve, Yoan1,2 (AUTHOR), maître, Julien1 (AUTHOR), Grimard, Renaud3 (AUTHOR)
Source:
Procedia Computer Science. 2025, Vol. 270, p620-629. 10p.
Database:
Supplemental Index

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This paper introduces a new approach to nurse scheduling that integrates employee well-being into the decision-making process. A random forest regressor is trained to estimate a well-being score for each nurse, leveraging data from previous work weeks and considering multiple factors related to past schedules. This score is incorporated into a mixed-integer linear programming model to guide the assignment of shifts, aiming to better align schedules with individual needs. Nurses with lower well-being scores are prioritized for reduced overtime and increased shift preferences, promoting a fairer distribution of workload. The proposed method generates schedules that balance operational requirements with employee health, potentially mitigating fatigue and absenteeism. [ABSTRACT FROM AUTHOR]