TY - JOUR T1 - Development of Cargo Delivery Time Prediction Models AU - Ulus, Ceren AU - Hanedar, Selim AU - Akay, Mehmet Fatih PY - 2024 DA - June Y2 - 2024 JF - Cukurova University Journal of Natural and Applied Sciences JO - CUNAS PB - Cukurova University WT - DergiPark SN - 2822-2938 SP - 31 EP - 35 VL - 3 IS - 1 LA - en AB - E-commerce stands out as the sales form with the fastest growth momentum with high sales volumes. Managing sales volumes efficiently is of great importance in maximizing customer satisfaction. By accurately predicting delivery times, effec-tive logistics optimization is achieved and customers are informed about how long it will take for their cargo to be delivered. In this study, it is aimed to develop cargo delivery time prediction models with machine learning-based Categorical Boosting (CatBoost), Decision Tree (DT), Extreme Learning Machine (ELM), Light Gradient Boosting Machine (LightGBM) and Support Vector Machine (SVM). The 5113-row dataset contains delivery history information for the 16-month period between February 14, 2019, and June 13, 2020. The performance of the developed models has been evaluated using Mean Absolute Percentage Error (MAPE) by utilizing 5-fold cross-validation on the dataset. The results show that the models developed using SVM exhibited the most successful prediction performance. KW - Delivery Time Prediction KW - Machine Learning KW - E-Commerce CR - [1] Nodirovna, M. S., & Sharif oʻg‘li, A. S. (2024). E-Commerce Trends: Shaping The Future of Retail. Open Herald: Peri-odical of Methodical Research, 2(3), 46-49. CR - [2] Muñoz-Villamizar, A., Velázquez-Martínez, J. C., Haro, P., Ferrer, A., & Mariño, R. (2021). The environmental impact of fast shipping ecommerce in inbound logistics operations: A case study in Mexico. Journal of Cleaner Production, 283, 125400. CR - [3] Cui, R., Lu, Z., Sun, T., & Golden, J. M. (2024). Sooner or later? 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Applied Sciences, 12(10), 4851. CR - [19] URL https://www.kaggle.com/datasets/salil007/1-shipping-optimization-challenge?select=train_2_pr.csv UR - https://dergipark.org.tr/en/pub/cunas/issue//1489236 L1 - https://dergipark.org.tr/en/download/article-file/3952772 ER -