• Media type: E-Article
  • Title: Robust small area estimation and oversampling in the estimation of poverty indicators
  • Other titles: Stabile Schätzung von Kleinflächen und Oversampling bei der Schätzung von Armutsindikatoren
  • Contributor: Giusti, Caterina [Author]; Marchetti, Stefano [Author]; Pratesi, Monica [Author]; Salvati, Nicola [Author]
  • imprint: 2012
  • Language: English
  • DOI: https://doi.org/10.18148/srm/2012.v6i3.5131
  • Identifier:
  • Keywords: Methode ; Messung ; Armut ; Indikator ; Indikatorenforschung ; Indikatorenbildung ; Daten ; Datenorganisation ; Datenqualität
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  • Footnote:
  • Description: "There has been rising interest in research on poverty mapping over the last decade, with the European Union proposing a core of statistical indicators on poverty commonly known as Laeken Indicators. They include the incidence and the intensity of poverty for a set of domains (e.g. young people, unemployed people). The EU-SILC (European Union - Statistics on Income and Living Conditions) survey represents the most important source of information to estimate these poverty indicators at national or regional level (NUTS 1-2 level). However, local policy makers also require statistics on poverty and living conditions at lower geographical/domain levels, but estimating poverty indicators directly from EU-SILC for these domains often leads to inaccurate estimates. To overcome this problem there are two main strategies: i. increasing the sample size of EU-SILC so that direct estimates become reliable and ii. resort to small area estimation techniques. In this paper the authors compare these two alternatives: with the availability of an oversampling of the EU-SILC survey for the province of Pisa, obtained as a side result of the SAMPLE project (Small Area Methods for Poverty and Living Conditions, http://www.sample-project.eu/ ), they can compute reliable direct estimates that can be compared to small area estimates computed under the M-quantile approach. Results show that the M-quantile small area estimates are comparable in terms of efficiency and precision to direct estimates using oversample data. Moreover, considering the oversample estimates as a benchmark, they show how direct estimates computed without the oversample have larger errors as well as larger estimated mean squared errors than corresponding M-quantile estimates." (author's abstract)
  • Access State: Open Access
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