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Predicting Demand in Supply Chain Management: A Decision Support System Using Graph Convolutional Networks

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  • Stefani Sifuentes-Domínguez

    (Departamento de Ingeniería Eléctrica, Instituto de Ingeniería y Tecnología, Universidad Autónoma de Ciudad Juárez, Ciudad Juarez 32310, Mexico)

  • Jose-Manuel Mejia-Muñoz

    (Departamento de Ingeniería Eléctrica, Instituto de Ingeniería y Tecnología, Universidad Autónoma de Ciudad Juárez, Ciudad Juarez 32310, Mexico)

  • Oliverio Cruz-Mejia

    (Departamento de Ingeniería Industrial, FES Aragón, Universidad Nacional Autónoma de México, Nezahualcóyotl 57171, Mexico)

  • Rubén Pizarro-Gurrola

    (Departamento de Sistemas y Computación, Tecnológico Nacional de México, Instituto Tecnológico de Durango, Durango 34080, Mexico)

  • Aracelí-Soledad Domínguez-Flores

    (Departamento de Sistemas y Computación, Tecnológico Nacional de México, Instituto Tecnológico de Durango, Durango 34080, Mexico)

  • Leticia Ortega-Máynez

    (Departamento de Ingeniería Eléctrica, Instituto de Ingeniería y Tecnología, Universidad Autónoma de Ciudad Juárez, Ciudad Juarez 32310, Mexico)

Abstract

This work addresses the problem of demand forecasting in supply chain management, where the consolidation of scattered and heterogeneous data and the lack of precise forecasting methods generate operational inefficiencies, resulting in increased backorders and high inventory costs. To tackle these challenges, we propose a novel Decision Support System that jointly integrates an intelligent processing engine based on Graph Neural Networks (GNNs) for time series forecasting. Our approach lies in explicitly modeling the demand prediction task as a Multivariate Time Series forecasting problem on a causal dependency graph. Specifically, we use a GCN to process a graph where the nodes represent the target demand and key exogenous variables (Consumer Sentiment Index, Consumer Price Index, Personal Income, and Unemployment Rate), and the edges explicitly encode the interdependencies and causal relationships among these economic factors and demand. Unlike previous applications of GNNs in supply chain management, which typically focus on inventory networks or single-factor interactions, our approach uses GCN to dynamically capture the temporal interactions among multiple macroeconomic and internal series on future demand. We compare our method with other machine learning algorithms for demand forecasting. In the experiments conducted, the proposed GCN approach can accurately predict the abrupt changes that appear in demand behavior over time, whereas the other comparison methods tend to excessively smooth these transitions.

Suggested Citation

  • Stefani Sifuentes-Domínguez & Jose-Manuel Mejia-Muñoz & Oliverio Cruz-Mejia & Rubén Pizarro-Gurrola & Aracelí-Soledad Domínguez-Flores & Leticia Ortega-Máynez, 2026. "Predicting Demand in Supply Chain Management: A Decision Support System Using Graph Convolutional Networks," Future Internet, MDPI, vol. 18(1), pages 1-22, January.
  • Handle: RePEc:gam:jftint:v:18:y:2026:i:1:p:26-:d:1831690
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