The paper introduces a novel approach based on optimal transport theory to model global trade flows and identify the underlying cost structure driving trade patterns. This method dispenses with the use of covariates and functional forms required by traditional gravity models, instead learning the cost matrix directly from data using a deep neural network.
The key highlights and insights are:
The optimal transport approach consistently outperforms gravity models in accurately estimating trade volumes, often by orders of magnitude. It also provides natural uncertainty quantification on the cost estimates.
The authors apply the method to analyze the impacts of the 2022 Russia-Ukraine war on global wheat trade, showing that the global South was disproportionately affected by increased trade barriers.
The analysis of free trade agreements in Southeast Asia and trade disputes between China, the US, and Australia reveals hidden patterns in trade costs that are not evident from trade volumes alone.
The study of Brexit's impact on UK-EU trade in vegetables and wine demonstrates how the optimal transport approach can capture asymmetric changes in trade barriers between countries.
The ability to infer the underlying cost structure driving trade allows the method to uncover economic effects that are obscured when only looking at trade volumes or prices. This provides a more comprehensive understanding of the complex factors shaping global trade dynamics.
Overall, the optimal transport framework offers a powerful and versatile tool for modeling and analyzing global trade patterns, with applications spanning economics, logistics, and policy analysis.
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by Thomas Gaski... lúc arxiv.org 09-11-2024
https://arxiv.org/pdf/2409.06554.pdfYêu cầu sâu hơn