Handling Out‐of‐Sample Areas to Estimate the Unemployment Rate at Local Labour Market Areas in Italy

Author:

Benedetti Roberto1ORCID,Piersimoni Federica2ORCID,Pratesi Monica34ORCID,Salvati Nicola3ORCID,Suesse Thomas5ORCID

Affiliation:

1. Department of Economic Studies (DEc) ‘G. d'Annunzio’ University of Chieti‐Pescara Pescara Italy

2. Directorate for Methodology and Statistical Process Design ISTAT Rome Italy

3. Department of Economics and Management University of Pisa Pisa Italy

4. Department of Statistical Production ISTAT Rome Italy

5. National Institute of Applied Statistics Research Australia University of Wollongong Wollongong Australia

Abstract

SummaryUnemployment rate estimates for small areas are used to efficiently support the distribution of services and the allocation of resources, grants and funding. A Fay–Herriot type model is the most used tool to obtain these estimates. Under this approach out‐of‐sample areas require some synthetic estimates. As the geographical context is extremely important for analysing local economies, in this paper, we allow for area random effects to be spatially correlated. The spatial model parameters are estimated by a marginal likelihood method and are used to predict in‐sample as well as out‐of‐sample areas. Extensive simulation experiments are used to assess the impact of the auto‐regression parameter and of the rate of out‐of‐sample areas on the performance of this approach. The paper concludes with an illustrative application on real data from the Italian Labour Force Survey in which the estimation of the unemployment rate in each Local Labour Market Area is addressed.

Publisher

Wiley

Reference67 articles.

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3. Bell(2008).Examining sensitivity of small area inferences to uncertainty about sampling error variances. InProceedings of the Survey Research Section American Statistical Association pp.327–334.

4. Agricultural Survey Methods

5. Spatial auto‐correlation and auto‐regressive models estimation from sample survey data;Benedetti R.;Biometrical Journal,2020

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