Book: Proceedings of the 11th International Conference on Production Research – Americas
Beta-hCG test demand forecasting using stacking ensemble-learning and machine learning approaches
Beta-hCG test
Time series
Demand forecasting
Machine learning
Stacking ensemble-learning
Abstract
Demand forecasting is essential for decision-making, since these forecasts are important inputs for strategic management decisions. In this context, the contribution of this study is to propose a hybrid forecasting framework that combines machine learning (ML) models and a stacking ensemble-learning (STACK) approach to forecast the Beta-hCG test demand using a multi-day ahead forecasting strategy. The experiment consisted in comparing the performance of the STACK strategy with the ML models using statistical performance measures. The results show that the STACK model was the most accurate forecaster for 1, 30, and 45 days ahead, while the Generalized Linear Model was the most accurate for 15 days, and Gaussian Process Regression for 60 days. In summary, the STACK model outperformed the compared models in the analyzed forecasting horizons with an average of improvement performance index ranging from 0.69% and 28.38%. Indeed, the proposed forecasting framework provides forecasts that support decision-making in diverse strategic departments in the company, such as sales, marketing, manufacturing, and logistics departments.
NoteHow to cite this work
Da Silva, Ramon G., Valeria Tafoya-Martinez, Fernanda D. Silva, et al. 2023. “Beta-hCG Test Demand Forecasting Using Stacking Ensemble-Learning and Machine Learning Approaches.” In Proceedings of the 11th International Conference on Production Research – Americas, edited by Fernando Deschamps, Edson Pinheiro De Lima, Sérgio E. Gouvêa Da Costa, and Marcelo G. Trentin. Springer Nature Switzerland. https://doi.org/10.1007/978-3-031-36121-0_34.
@inproceedings{dasilva_beta_2023,
address = {Cham},
author = {{da Silva}, Ramon Gomes and Tafoya-Martinez, Valeria and Silva, Fernanda D'amico and Cardoso, Milena Andreuzo and Severo, Evair Borges and Cardoso, Carolina Queiroz and Ribeiro, Matheus Henrique Dal Molin and Mariani, Viviana Cocco and Coelho, Leandro Santos},
editor = {Deschamps, Fernando and Pinheiro de Lima, Edson and Gouv{\^e}a da Costa, S{\'e}rgio E. and G. Trentin, Marcelo},
booktitle = {Proceedings of the 11th International Conference on Production Research -- Americas},
publisher = {Springer Nature Switzerland},
title = {Beta-hCG test demand forecasting using stacking ensemble-learning and machine learning approaches},
doi = {10.1007/978-3-031-36121-0_34},
year = {2023},
pages = {274--280},
isbn = {978-3-031-36121-0}
}