HKS Authors

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Abstract

Bilateral trade data informs foreign and domestic policy decisions, serves as a growth indicator, determines tariffs, and is the basis for financial and investment decisions for corporations. Accurate trade data translates into better decision-making. However, the raw bilateral trade data reported by UN Comtrade suffer from two structural problems: reporting differences between country partners and countries reporting in different product classification systems, which require product-level harmonization to compare data across countries. In this paper, we address these challenges by combining a mirroring technique and a data-driven concordance method. Mirroring reconciles importer and exporter differences by imputing country reliability scores and applying a weighted country-pair average to calculate the estimated trade value. We harmonize product classifications across vintages by calculating conversion weights that reflect a product’s market share. The resulting publicly available datasets mitigate issues in raw trade statistics, reducing reporting inconsistencies while maintaining product-level granularity across six decades.

Citation

Bustoa, Sebastian, Ellie Jackson, David Torun, Brendan Leonard, Nil Tuzcu, Piotr Lukaszuk, Annie White, Ricardo Hausmann, and Muhammed A. Yildirim. "Tackling Discrepancies in Trade Data: The Harvard Growth Lab International Trade Datasets." Growth Lab Working Paper Series, July 2025.