Estimating the drivers of urban economic complexity and their connection to economic performance

Estimating the capabilities, or inputs of production, that drive and constrain the economic development of urban areas has remained a challenging goal. We posit that capabilities are instantiated in the complexity and sophistication of urban activities, the know-how of individual workers, and the ci...

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Main Authors: Andres Gomez-Lievano, Oscar Patterson-Lomba
Format: Article
Language:English
Published: The Royal Society 2021-09-01
Series:Royal Society Open Science
Subjects:
Online Access:https://royalsocietypublishing.org/doi/10.1098/rsos.210670
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spelling doaj-4d0c2bcfaa444361bc3bd1d178c0017e2021-09-22T07:05:23ZengThe Royal SocietyRoyal Society Open Science2054-57032021-09-018910.1098/rsos.210670Estimating the drivers of urban economic complexity and their connection to economic performanceAndres Gomez-Lievano0Oscar Patterson-Lomba1Growth Lab, Harvard University, Cambridge MA, USAAnalysis Group Inc., Boston MA, USAEstimating the capabilities, or inputs of production, that drive and constrain the economic development of urban areas has remained a challenging goal. We posit that capabilities are instantiated in the complexity and sophistication of urban activities, the know-how of individual workers, and the city-wide collective know-how. We derive a model that indicates how the value of these three quantities can be inferred from the probability that an individual in a city is employed in a given urban activity. We illustrate how to estimate empirically these variables using data on employment across industries and metropolitan statistical areas in the USA. We then show how the functional form of the probability function derived from our theory is statistically superior when compared with competing alternative models, and that it explains well-known results in the urban scaling and economic complexity literature. Finally, we show how the quantities are associated with metrics of economic performance, suggesting our theory can provide testable implications for why some cities are more prosperous than others.https://royalsocietypublishing.org/doi/10.1098/rsos.210670economic complexitycollective know-howindustry complexityurban employment
collection DOAJ
language English
format Article
sources DOAJ
author Andres Gomez-Lievano
Oscar Patterson-Lomba
spellingShingle Andres Gomez-Lievano
Oscar Patterson-Lomba
Estimating the drivers of urban economic complexity and their connection to economic performance
Royal Society Open Science
economic complexity
collective know-how
industry complexity
urban employment
author_facet Andres Gomez-Lievano
Oscar Patterson-Lomba
author_sort Andres Gomez-Lievano
title Estimating the drivers of urban economic complexity and their connection to economic performance
title_short Estimating the drivers of urban economic complexity and their connection to economic performance
title_full Estimating the drivers of urban economic complexity and their connection to economic performance
title_fullStr Estimating the drivers of urban economic complexity and their connection to economic performance
title_full_unstemmed Estimating the drivers of urban economic complexity and their connection to economic performance
title_sort estimating the drivers of urban economic complexity and their connection to economic performance
publisher The Royal Society
series Royal Society Open Science
issn 2054-5703
publishDate 2021-09-01
description Estimating the capabilities, or inputs of production, that drive and constrain the economic development of urban areas has remained a challenging goal. We posit that capabilities are instantiated in the complexity and sophistication of urban activities, the know-how of individual workers, and the city-wide collective know-how. We derive a model that indicates how the value of these three quantities can be inferred from the probability that an individual in a city is employed in a given urban activity. We illustrate how to estimate empirically these variables using data on employment across industries and metropolitan statistical areas in the USA. We then show how the functional form of the probability function derived from our theory is statistically superior when compared with competing alternative models, and that it explains well-known results in the urban scaling and economic complexity literature. Finally, we show how the quantities are associated with metrics of economic performance, suggesting our theory can provide testable implications for why some cities are more prosperous than others.
topic economic complexity
collective know-how
industry complexity
urban employment
url https://royalsocietypublishing.org/doi/10.1098/rsos.210670
work_keys_str_mv AT andresgomezlievano estimatingthedriversofurbaneconomiccomplexityandtheirconnectiontoeconomicperformance
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