Extracting Geography from Trade Data
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Understanding international trade is a fundamental problem in economics -- one standard approach is via what is commonly called the "gravity equation", which predicts the total amount of trade F_ij between two countries i and j as where G is a constant, M_i, M_j denote the "economic mass" (often simply the gross domestic product) and D_ij the "distance" between countries i and j, where "distance" is a complex notion that includes geographical, historical, linguistic and sociological components. We take the inverse route and ask ourselves to which extent it is possible to reconstruct meaningful information about countries simply from knowing the bilateral trade volumes F_ij: indeed, we show that a remarkable amount of geopolitical information can be extracted. The main tool is a spectral decomposition of the Graph Laplacian as a tool to perform nonlinear dimensionality reduction. This may have further applications in economic analysis and provides a data-based approach to "trade distance".