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Autor
Wawrowski Łukasz (Łukasiewicz Research Network, Institute of Innovative Technologies EMAG, Poland), Beręsewicz Maciej (Poznań University of Economics, Poland)
Tytuł
Small Area Estimates of the Low Work Intensity Indicatorat Voivodeship Level in Poland
Źródło
Statistics in Transition, 2021, vol. 22, nr 2, s. 155-172, tab., wykr., bibliogr. 31 poz.
Słowa kluczowe
Rynek pracy, Analiza danych statystycznych, Modele statystyczne
Labour market, Statistical data analysis, Statistical models
Uwagi
summ.
Kraj/Region
Polska
Poland
Abstrakt
The EU Statistics on Income and Living Conditions (EU-SILC) has provided annual esti-mates of the number of labour market indicators for EU countries since 2003, with an almostexclusive focus on national rates. However, it is impossible to obtain reliable direct estimatesof labour market statistics at low levels based on the EU-SILC survey. In such cases, model-based small area estimation can be used. In this paper, the low work intensity indicator forthe spatial domains in Poland between 2005-2012 was estimated. The Rao and You (1994),Fay and Diallo (2012), and Marhuenda, Molina and Morales (2013) models were applied.The bootstrap MSE for the discussed methods was proposed. The results indicate that thesemodels provide more reliable estimates than direct estimation.(original abstract)
Dostępne w
Biblioteka Główna Uniwersytetu Ekonomicznego w Krakowie
Biblioteka SGH im. Profesora Andrzeja Grodka
Biblioteka Główna Uniwersytetu Ekonomicznego w Katowicach
Pełny tekst
Pokaż
Bibliografia
Pokaż
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Cytowane przez
Pokaż
ISSN
1234-7655
Język
eng
URI / DOI
http://dx.doi.org/10.21307/stattrans-2021-021
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