1. An integrated data-driven framework for urban energy use modeling (UEUM);Abbasabadi;Applied Energy,2019
2. Estimating energy savings of ultra-high-performance fibre-reinforced concrete facade panels at the early design stage of buildings using gradient boosting machines;Abediniangerabi;Advances in Building Energy Research,2022
3. Adana, S., Cevikparmak, S., Celik, H., & Uvet, H. (2019, November). Predicting Backorders Using Machine Learning Techniques.
4. Ahmed, F., Hasan, M., Hossain, M. S., & Andersson, K. (2022). Comparative Performance of Tree Based Machine Learning Classifiers in Product Backorder Prediction. In P. Vasant, G.-W. Weber, J. A. Marmolejo-Saucedo, E. Munapo, & J. J. Thomas (Eds.), Intelligent Computing & Optimization (Vol. 569, pp. 572–584). Springer International Publishing. https://doi.org/10.1007/978-3-031-19958-5_54.
5. A comparative analysis of machine learning and statistical methods for evaluating building performance: A systematic review and future benchmarking framework;Ali;Building and Environment,2024