Koch, Philipp, Stojkoski, Viktor and Hidalgo, Cesar Augusto (2024) Augmenting the availability of historical GDP per capita estimates through machine learning. Proceedings of the National Academy of Sciences of the United States of America, Vol. 121 (N° 39).

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Identification Number : 10.1073/pnas.2402060121

Abstract

Can we use data on the biographies of historical figures to estimate the GDP per capita of countries and regions? Here, we introduce a machine learning method to estimate the GDP per capita of dozens of countries and hundreds of regions in Europe and North America for the past seven centuries starting from data on the places of birth, death, and occupations of hundreds of thousands of historical figures. We build an elastic net regression model to perform feature selection and generate out-of-sample estimates that explain 90% of the variance in known historical income levels. We use this model to generate GDP per capita estimates for countries, regions, and time periods for which these data are not available and externally validate our estimates by comparing them with four proxies of economic output: urbanization rates in the past 500 y, body height in the 18th century, well-being in 1850, and church building activity in the 14th and 15th century. Additionally, we show our estimates reproduce the well-known reversal of fortune between southwestern and northwestern Europe between 1300 and 1800 and find this is largely driven by countries and regions engaged in Atlantic trade. These findings validate the use of fine-grained biographical data as a method to augment historical GDP per capita estimates. We publish our estimates with CI together with all collected source data in a comprehensive dataset.

Item Type: Article
Language: English
Date: 16 September 2024
Refereed: Yes
Place of Publication: Washington
Subjects: B- ECONOMIE ET FINANCE
Divisions: TSE-R (Toulouse)
Site: UT1
Date Deposited: 14 Feb 2025 13:39
Last Modified: 14 Mar 2025 12:40
OAI Identifier: oai:tse-fr.eu:130192
URI: https://publications.ut-capitole.fr/id/eprint/50295
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