Beyond Accuracy: Evaluating Forecasting Models by Multi-Echelon Inventory Cost

17 March 2026, Version 1
This content is an early or alternative research output and has not been peer-reviewed by Cambridge University Press at the time of posting.

Abstract

This study develops a digitalized forecasting–inventory optimization pipeline integrating traditional forecasting models, machine learning regressors, and deep sequence models within a unified inventory simulation framework. Using the M5 Walmart dataset, we evaluate seven forecasting approaches and assess their operational impact under single- and two-echelon newsvendor systems. Results indicate that Temporal CNN and LSTM models significantly reduce inventory costs and improve fill rates compared to statistical baselines. Sensitivity and multi-echelon analyses demonstrate robustness and scalability, offering a data-driven decision-support tool for modern supply chains.

Keywords

Demand forecasting
Inventory optimization
Multi-echelon supply chain
Newsvendor simulation
Deep learning (LSTM
Temporal CNN)

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