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Spatial earnings inequality

Spatial earnings inequality
Spatial earnings inequality
Earnings inequality in Germany has increased dramatically. Measuring inequality locally at the level of cities annually since 1985, we find that behind this development is the rapidly worsening inequality in the largest cities, driven by increasing earnings polarisation. In the cross-section, local earnings inequality rises substantially in city size, and this city-size inequality penalty has increased steadily since 1985, reaching an elasticity of .2 in 2010. Inequality decompositions reveal that overall earnings inequality is almost fully explained by the within-locations component, which in turn is driven by the largest cities. The worsening inequality in the largest cities is amplified by their greater population weight. Examining the local earnings distributions directly reveals that this is due to increasing earnings polarisation that is strongest in the largest places. Both upper and lower distributional tails become heavier over time, and are the heaviest in the largest cities. We establish these results using a large and spatially representative administrative data set, and address the top-coding problem in these data using a parametric distribution approach that outperforms standard imputations.
Earnings inequality, spatial inequality, inequality decomposition, local earnings polarisation
1569-1721
Schluter, Christian
ae043254-4cc4-48aa-abad-56a36554de2b
Trede, Mark
7233d600-13a2-4c24-ae9d-16aed9bfca30
Schluter, Christian
ae043254-4cc4-48aa-abad-56a36554de2b
Trede, Mark
7233d600-13a2-4c24-ae9d-16aed9bfca30

Schluter, Christian and Trede, Mark (2024) Spatial earnings inequality. The Journal of Economic Inequality. (doi:10.1007/s10888-023-09616-3).

Record type: Article

Abstract

Earnings inequality in Germany has increased dramatically. Measuring inequality locally at the level of cities annually since 1985, we find that behind this development is the rapidly worsening inequality in the largest cities, driven by increasing earnings polarisation. In the cross-section, local earnings inequality rises substantially in city size, and this city-size inequality penalty has increased steadily since 1985, reaching an elasticity of .2 in 2010. Inequality decompositions reveal that overall earnings inequality is almost fully explained by the within-locations component, which in turn is driven by the largest cities. The worsening inequality in the largest cities is amplified by their greater population weight. Examining the local earnings distributions directly reveals that this is due to increasing earnings polarisation that is strongest in the largest places. Both upper and lower distributional tails become heavier over time, and are the heaviest in the largest cities. We establish these results using a large and spatially representative administrative data set, and address the top-coding problem in these data using a parametric distribution approach that outperforms standard imputations.

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Accepted/In Press date: 2024
Published date: 25 January 2024
Additional Information: Publisher Copyright: © 2024, The Author(s).
Keywords: Earnings inequality, spatial inequality, inequality decomposition, local earnings polarisation

Identifiers

Local EPrints ID: 486790
URI: http://eprints.soton.ac.uk/id/eprint/486790
ISSN: 1569-1721
PURE UUID: 322d8990-2555-43a6-b97c-945c3a2364b9

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Date deposited: 06 Feb 2024 17:39
Last modified: 12 Apr 2024 17:06

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Author: Mark Trede

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