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Estimating regional income indicators under transformations and access to limited population auxiliary information

Estimating regional income indicators under transformations and access to limited population auxiliary information
Estimating regional income indicators under transformations and access to limited population auxiliary information
Spatially disaggregated income indicators are typically estimated by using model-based methods that assume access to auxiliary information from population micro-data. In many countries like Germany and the UK population micro-data are not publicly available. In this work we propose small area methodology when only aggregate population-level auxiliary information is available. We use data-driven transformations of the response to satisfy the parametric assumptions of the used models. In the absence of population micro-data, appropriate bias-corrections for small area prediction are needed. Under the approach we propose in this paper, aggregate statistics (means and covariances) and kernel density estimation are used to resolve the issue of not having access to population micro-data. We further explore the estimation of the mean squared error using the parametric bootstrap. Extensive model-based and design-based simulations are used to compare the proposed method to alternative methods. Finally, the proposed methodology is applied to the 2011 Socio-Economic Panel and aggregate census information from the same year to estimate the average income for 96 regional planning regions in Germany
0964-1998
1679-1706
Würz, Nora
237b08df-4f82-4917-b3af-56d8c7ab969c
Schmid, Timo
6f0ac270-0f64-4f86-ad3c-77a722cb14a4
Tzavidis, Nikos
431ec55d-c147-466d-9c65-0f377b0c1f6a
Würz, Nora
237b08df-4f82-4917-b3af-56d8c7ab969c
Schmid, Timo
6f0ac270-0f64-4f86-ad3c-77a722cb14a4
Tzavidis, Nikos
431ec55d-c147-466d-9c65-0f377b0c1f6a

Würz, Nora, Schmid, Timo and Tzavidis, Nikos (2022) Estimating regional income indicators under transformations and access to limited population auxiliary information. Journal of the Royal Statistical Society: Series A (Statistics in Society), 185 (4), 1679-1706. (doi:10.1111/rssa.12913).

Record type: Article

Abstract

Spatially disaggregated income indicators are typically estimated by using model-based methods that assume access to auxiliary information from population micro-data. In many countries like Germany and the UK population micro-data are not publicly available. In this work we propose small area methodology when only aggregate population-level auxiliary information is available. We use data-driven transformations of the response to satisfy the parametric assumptions of the used models. In the absence of population micro-data, appropriate bias-corrections for small area prediction are needed. Under the approach we propose in this paper, aggregate statistics (means and covariances) and kernel density estimation are used to resolve the issue of not having access to population micro-data. We further explore the estimation of the mean squared error using the parametric bootstrap. Extensive model-based and design-based simulations are used to compare the proposed method to alternative methods. Finally, the proposed methodology is applied to the 2011 Socio-Economic Panel and aggregate census information from the same year to estimate the average income for 96 regional planning regions in Germany

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Accepted/In Press date: 3 July 2022
Published date: 1 October 2022

Identifiers

Local EPrints ID: 468445
URI: http://eprints.soton.ac.uk/id/eprint/468445
ISSN: 0964-1998
PURE UUID: 92c73c70-1a74-4462-952e-b902df012cfc
ORCID for Nikos Tzavidis: ORCID iD orcid.org/0000-0002-8413-8095

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Date deposited: 15 Aug 2022 16:52
Last modified: 17 Mar 2024 07:25

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Contributors

Author: Nora Würz
Author: Timo Schmid
Author: Nikos Tzavidis ORCID iD

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