Skip to main content

Write a PREreview

Intelligent Supply Chain Optimization in Emerging Markets Using Ensemble Machine Learning

Posted
Server
Preprints.org
DOI
10.20944/preprints202508.1155.v1

In today’s highly competitive and volatile environment, supply chains in emerging economies face ongoing challenges related to inventory management, demand forecasting, and distribution efficiency. This research proposes a predictive approach based on machine learning, specifically using ensemble stacking techniques, to optimize key logistics processes. Real-world data from a commercial company was used to develop a predictive framework that integrates various base algorithms Random Forest, CatBoost, XGBoost, Gradient Boosting, Decision Trees, and K-Nearest Neighbors combined through a Linear Regression meta-model. Performance evaluation using metrics such as MSE, RMSE, MAE, and R² revealed significant improvements in predictive accuracy compared to individual models, particularly in indicators such as material demand, purchase profitability, sales revenue, and inventory levels. The findings confirm that stacked models not only enhance forecasting capabilities but also offer a scalable, adaptable, and cost-effective solution to support logistics decision-making in resource-constrained contexts. This approach presents a strong alternative for boosting operational efficiency in supply chains across developing regions.

You can write a PREreview of Intelligent Supply Chain Optimization in Emerging Markets Using Ensemble Machine Learning. A PREreview is a review of a preprint and can vary from a few sentences to a lengthy report, similar to a journal-organized peer-review report.

Before you start

We will ask you to log in with your ORCID iD. If you don’t have an iD, you can create one.

What is an ORCID iD?

An ORCID iD is a unique identifier that distinguishes you from everyone with the same or similar name.

Start now