Variance estimation of change in poverty rates: an application to the Turkish EU-SILC Survey
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 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.
Linearisation;, multivariate regression, stratification, unequal inclusion probabilities
155-175
Berger, Yves
8fd6af5c-31e6-4130-8b53-90910bf2f43b
Oguz Alper, Melike
02d5ed8a-e9e3-438a-95c0-709acd83a5f8
27 June 2015
Berger, Yves
8fd6af5c-31e6-4130-8b53-90910bf2f43b
Oguz Alper, Melike
02d5ed8a-e9e3-438a-95c0-709acd83a5f8
Berger, Yves and Oguz Alper, Melike
(2015)
Variance estimation of change in poverty rates: an application to the Turkish EU-SILC Survey.
Journal of Official Statistics, 31 (2), .
(doi:10.1515/JOS-2015-0012).
Abstract
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.
Text
10.1515_jos-2015-0012
- Version of Record
More information
Accepted/In Press date: 1 April 2014
Published date: 27 June 2015
Keywords:
Linearisation;, multivariate regression, stratification, unequal inclusion probabilities
Identifiers
Local EPrints ID: 454868
URI: http://eprints.soton.ac.uk/id/eprint/454868
ISSN: 0282-423X
PURE UUID: 153d5a92-4961-4bed-bc08-44e8ed1195b8
Catalogue record
Date deposited: 28 Feb 2022 17:35
Last modified: 17 Mar 2024 04:17
Export record
Altmetrics
Contributors
Author:
Melike Oguz Alper
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics