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-bas...

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Bibliographic Details
Published inScandinavian journal of statistics Vol. 43; no. 3; pp. 806 - 826
Main Authors Schmid, Timo, Tzavidis, Nikos, Münnich, Ralf, Chambers, Ray
Format Journal Article
LanguageEnglish
Published Oxford Blackwell Publishing Ltd 01.09.2016
Wiley Publishing
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Summary: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, uncorrected 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.
Bibliography:istex:248F38B440821EF63DE13C90B5903E8086EA6399
Supporting info itemSupporting info item
ark:/67375/WNG-2VH1HC1F-R
European Commission's 7th Framework Programme - No. 312691
ArticleID:SJOS12205
ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 23
ISSN:0303-6898
1467-9469
DOI:10.1111/sjos.12205