Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC Survey

Interpreting changes between point estimates at different waves may be misleading if we do not take the sampling variation into account. It is therefore necessary to estimate the standard error of these changes in order to judge whether or not the observed changes are statistically significant. This...

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Main Authors: Oguz Alper Melike, Berger Yves G.
Format: Article
Language:English
Published: Sciendo 2015-06-01
Series:Journal of Official Statistics
Subjects:
Online Access:https://doi.org/10.1515/jos-2015-0012
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spelling doaj-b6e184f9ce1b4122ad85058b1151136b2021-09-06T19:40:51ZengSciendoJournal of Official Statistics2001-73672015-06-0131215517510.1515/jos-2015-0012jos-2015-0012Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC SurveyOguz Alper Melike0Berger Yves G.1University of Southampton, University Road Bldg. 58, Southampton SO17 1BJ, UKUniversity of Southampton, University Road Bldg. 58, Southampton SO17 1BJ, UKInterpreting changes between point estimates at different waves may be misleading if we do not take the sampling variation into account. It is therefore necessary to estimate the standard error of these changes in order to judge whether or not the observed changes are statistically significant. This involves the estimation of temporal correlations between cross-sectional estimates, because correlations play an important role in estimating the variance of a change in the cross-sectional estimates. Standard estimators for correlations cannot be used because of the rotation used in most panel surveys, such as the European Union Statistics on Income and Living Conditions (EU-SILC) surveys. Furthermore, as poverty indicators are complex functions of the data, they require special treatment when estimating their variance. For example, poverty rates depend on poverty thresholds which are estimated from medians. We propose using a multivariate linear regression approach to estimate correlations by taking into account the variability of the poverty threshold. We apply the approach proposed to the Turkish EU-SILC survey data.https://doi.org/10.1515/jos-2015-0012linearisationmultivariate regressionstratificationunequal inclusion probabilities.
collection DOAJ
language English
format Article
sources DOAJ
author Oguz Alper Melike
Berger Yves G.
spellingShingle Oguz Alper Melike
Berger Yves G.
Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC Survey
Journal of Official Statistics
linearisation
multivariate regression
stratification
unequal inclusion probabilities.
author_facet Oguz Alper Melike
Berger Yves G.
author_sort Oguz Alper Melike
title Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC Survey
title_short Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC Survey
title_full Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC Survey
title_fullStr Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC Survey
title_full_unstemmed Variance Estimation of Change in Poverty Rates: an Application to the Turkish EU-SILC Survey
title_sort variance estimation of change in poverty rates: an application to the turkish eu-silc survey
publisher Sciendo
series Journal of Official Statistics
issn 2001-7367
publishDate 2015-06-01
description Interpreting changes between point estimates at different waves may be misleading if we do not take the sampling variation into account. It is therefore necessary to estimate the standard error of these changes in order to judge whether or not the observed changes are statistically significant. This involves the estimation of temporal correlations between cross-sectional estimates, because correlations play an important role in estimating the variance of a change in the cross-sectional estimates. Standard estimators for correlations cannot be used because of the rotation used in most panel surveys, such as the European Union Statistics on Income and Living Conditions (EU-SILC) surveys. Furthermore, as poverty indicators are complex functions of the data, they require special treatment when estimating their variance. For example, poverty rates depend on poverty thresholds which are estimated from medians. We propose using a multivariate linear regression approach to estimate correlations by taking into account the variability of the poverty threshold. We apply the approach proposed to the Turkish EU-SILC survey data.
topic linearisation
multivariate regression
stratification
unequal inclusion probabilities.
url https://doi.org/10.1515/jos-2015-0012
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