Harnessing Graph Neural Networks to Predict International Trade Flows

Bassem Sellami, Chahinez Ounoughi, Tarmo Kalvet, M. Tiits, Diego Rincon-Yanez
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Abstract

In the realm of international trade and economic development, the prediction of trade flows between countries is crucial for identifying export opportunities. Commonly used log-linear regression models are constrained due to difficulties when dealing with extensive, high-cardinality datasets, and the utilization of machine learning techniques in predictions offers new possibilities. We examine the predictive power of Graph Neural Networks (GNNs) in estimating the value of bilateral trade between countries. We work with detailed UN Comtrade data that represent annual bilateral trade in goods between any two countries in the world and more than 5000 product groups. We explore two different types of GNNs, namely Graph Convolutional Networks (GCNs) and Graph Attention Networks (GATs), by applying them to trade flow data. This study evaluates the effectiveness of GNNs relative to traditional machine learning techniques such as random forest and examines the possible effects of data drift on their performance. Our findings reveal the superior predictive capability of GNNs, suggesting their effectiveness in modeling complex trade relationships. The research presented in this work offers a data-driven foundation for decision-making and is relevant for business strategies and policymaking as it helps in identifying markets, products, and sectors with significant development potential.
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利用图神经网络预测国际贸易流量
在国际贸易和经济发展领域,预测国家间的贸易流量对于确定出口机会至关重要。常用的对数线性回归模型在处理大量高心率数据集时受到限制,而在预测中利用机器学习技术则提供了新的可能性。我们研究了图形神经网络(GNN)在估算国家间双边贸易价值时的预测能力。我们使用了联合国商品贸易统计数据库的详细数据,这些数据代表了世界上任何两个国家和 5000 多个产品组之间的年度双边货物贸易。我们探索了两种不同类型的 GNN,即图卷积网络(GCN)和图注意网络(GAT),并将它们应用于贸易流量数据。本研究评估了 GNN 相对于随机森林等传统机器学习技术的有效性,并研究了数据漂移对其性能可能产生的影响。我们的研究结果揭示了 GNNs 的卓越预测能力,表明其在复杂贸易关系建模中的有效性。本作品中介绍的研究为决策提供了数据驱动基础,有助于识别具有巨大发展潜力的市场、产品和行业,因此与商业战略和政策制定息息相关。
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