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  4. Variance Estimation Using Linearization for Poverty and Social Exclusion Indicators

Variance Estimation Using Linearization for Poverty and Social Exclusion Indicators

Author(s)
Graf, Eric  
Faculté des sciences économiques  
Tillé, Yves  
Chaire de statistique appliquée  
Date issued
June 27, 2014
In
Survey Methodology
Vol
1
No
40
From page
61
To page
79
Subjects
: influence function EU-SILC survey non-linear statistics poverty and inequality indicators
Abstract
We have used the generalized linearization technique based on the concept of influence function, as Osier has done (Osier 2009), to estimate the variance of complex statistics such as Laeken indicators. Simulations conducted using the R language show that the use of Gaussian kernel estimation to estimate an income density function results in a strongly biased variance estimate. We are proposing two other density estimation methods that significantly reduce the observed bias. One of the methods has already been outlined by Deville (2000). The results published in this article will help to significantly improve the quality of information on the precision of certain Laeken indicators that are disseminated and compared internationally.
Project(s)
Convention Université de Neuchâtel/Office fédéral de la statistique  
Later version
http://www.statcan.gc.ca/pub/12-001-x/12-001-x2014001-eng.pdf
Publication type
journal article
Identifiers
https://libra.unine.ch/handle/20.500.14713/50496
-
https://libra.unine.ch/handle/123456789/21713
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