TY - JOUR
T1 - Enhancing Resource Assignment Efficiency in Service Industry
T2 - 6th International Conference on Industry 4.0 and Smart Manufacturing, ISM 2024
AU - Nasseri, Mehran
AU - Falatouri, Taha
AU - Brandtner, Patrick
AU - Darbanian, Farzaneh
AU - Mirshahi, Sina
N1 - Publisher Copyright:
© 2025 The Authors. Published by Elsevier B.V.
PY - 2025
Y1 - 2025
N2 - This paper addresses the critical aspect of resource planning in a service context through an integrated predictive and prescriptive approach. Utilizing real-world data from a company providing repair and maintenance services, we demonstrate the use of an XGBoost model to forecast ad-hoc service demands and subsequently optimize resource assignment using a mathematical model. Our findings show that the prediction evaluation metrics significantly improve, highlighting the superiority of complex machine learning models over baseline models such as Linear Regression. Furthermore, the integration of the prediction into the decision-making process resulted in a 26.4% lower decision error compared to the baseline model. Our research also found that the deviations in prediction and optimal objective function values are not aligned. While the average error for MAE % in prediction is 22.2%, the error for the optimal objective function is much lower, reducing to 5.3%. However, although true for our case, this might not be generalizable. Furthermore, when comparing the baseline model with these results, it is also shown that an improvement in prediction accuracy also improves decision making error. Our results indicate that a combined predict-then-optimize approach outperforms the existing methods in both predictive and prescriptive performance, demonstrating its applicability in real-world scenarios.
AB - This paper addresses the critical aspect of resource planning in a service context through an integrated predictive and prescriptive approach. Utilizing real-world data from a company providing repair and maintenance services, we demonstrate the use of an XGBoost model to forecast ad-hoc service demands and subsequently optimize resource assignment using a mathematical model. Our findings show that the prediction evaluation metrics significantly improve, highlighting the superiority of complex machine learning models over baseline models such as Linear Regression. Furthermore, the integration of the prediction into the decision-making process resulted in a 26.4% lower decision error compared to the baseline model. Our research also found that the deviations in prediction and optimal objective function values are not aligned. While the average error for MAE % in prediction is 22.2%, the error for the optimal objective function is much lower, reducing to 5.3%. However, although true for our case, this might not be generalizable. Furthermore, when comparing the baseline model with these results, it is also shown that an improvement in prediction accuracy also improves decision making error. Our results indicate that a combined predict-then-optimize approach outperforms the existing methods in both predictive and prescriptive performance, demonstrating its applicability in real-world scenarios.
KW - optimization
KW - predict-then-optimize
KW - predictive analytics
KW - Resource planning
KW - XGBoost
KW - Artificial Intelligence
KW - Supply chain management (SCM)
KW - machine learning (ML)
KW - predictive analytics
KW - optimization
UR - http://www.scopus.com/inward/record.url?scp=105000512631&partnerID=8YFLogxK
U2 - 10.1016/j.procs.2025.01.126
DO - 10.1016/j.procs.2025.01.126
M3 - Conference article
AN - SCOPUS:105000512631
SN - 1877-0509
VL - 253
SP - 644
EP - 653
JO - Procedia Computer Science
JF - Procedia Computer Science
Y2 - 13 November 2024 through 15 November 2024
ER -