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Outlier robust small area estimation under spatial correlation

Outlier robust small area estimation under spatial correlation
Outlier robust small area estimation under spatial correlation
Modern systems of official statistics require the estimation and publication of business statistics for disaggregated domains, for example, industry domains and geographical regions. Outlier robust methods have proven to be useful for small-area estimation. Recently proposed outlier robust model-based small-area methods assume, however, uncorrelated random effects. Spatial dependencies, resulting from similar industry domains or geographic regions, often occur. In this paper, we propose an outlier robust small-area methodology that allows for the presence of spatial correlation in the data. In particular, we present a robust predictive methodology that incorporates the potential spatial impact from other areas (domains) on the small area (domain) of interest. We further propose two parametric bootstrap methods for estimating the mean-squared error. Simulations indicate that the proposed methodology may lead to efficiency gains. The paper concludes with an illustrative application by using business data for estimating average labour costs in Italian provinces.
0303-6898
806-826
Schmid, Timo
6337d53e-bfc0-4a18-b31c-551d2f859336
Tzavidis, Nikos
431ec55d-c147-466d-9c65-0f377b0c1f6a
Munnich, Ralf
e6188f5d-fc9d-43eb-8926-bfaea21fb688
Chambers, Ray
96331700-f45e-4483-a887-fef921888ff2
Schmid, Timo
6337d53e-bfc0-4a18-b31c-551d2f859336
Tzavidis, Nikos
431ec55d-c147-466d-9c65-0f377b0c1f6a
Munnich, Ralf
e6188f5d-fc9d-43eb-8926-bfaea21fb688
Chambers, Ray
96331700-f45e-4483-a887-fef921888ff2

Schmid, Timo, Tzavidis, Nikos, Munnich, Ralf and Chambers, Ray (2016) Outlier robust small area estimation under spatial correlation. Scandinavian Journal of Statistics, 43 (3), 806-826. (doi:10.1111/sjos.12205).

Record type: Article

Abstract

Modern systems of official statistics require the estimation and publication of business statistics for disaggregated domains, for example, industry domains and geographical regions. Outlier robust methods have proven to be useful for small-area estimation. Recently proposed outlier robust model-based small-area methods assume, however, uncorrelated random effects. Spatial dependencies, resulting from similar industry domains or geographic regions, often occur. In this paper, we propose an outlier robust small-area methodology that allows for the presence of spatial correlation in the data. In particular, we present a robust predictive methodology that incorporates the potential spatial impact from other areas (domains) on the small area (domain) of interest. We further propose two parametric bootstrap methods for estimating the mean-squared error. Simulations indicate that the proposed methodology may lead to efficiency gains. The paper concludes with an illustrative application by using business data for estimating average labour costs in Italian provinces.

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Schmid et al - Outlier robust SAE under spatial correlation_final.pdf - Accepted Manuscript
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Accepted/In Press date: 22 November 2015
e-pub ahead of print date: 3 February 2016
Published date: 10 August 2016
Organisations: Statistics

Identifiers

Local EPrints ID: 384311
URI: http://eprints.soton.ac.uk/id/eprint/384311
ISSN: 0303-6898
PURE UUID: 0c2d7ded-46aa-4b78-b3c7-87ba591f2314
ORCID for Nikos Tzavidis: ORCID iD orcid.org/0000-0002-8413-8095

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Date deposited: 27 Nov 2015 15:09
Last modified: 15 Mar 2024 03:11

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Contributors

Author: Timo Schmid
Author: Nikos Tzavidis ORCID iD
Author: Ralf Munnich
Author: Ray Chambers

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