Improved calculation and dissemination of coefficients of variation in the Norwegian LFS
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2013-11Metadata
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Abstract
The estimation procedure in the Norwegian Labour Force Survey (NLFS) is more
complicated than simple calibration, but an empirical variance estimator was
derived for the NLFS by Hagesæther and Zhang (Notater 2007/22) based on
linearization.
This report documents the implementation of the improved calculation of sampling
error for the main variables and groups in the regular production system of the
NLFS. The empirical variance estimator is also extended with covariance elements
to cover figures of change and annual averages. The new calculations of coefficient
of variation (CV) and standard error (SE) are published in connection with the
regular publication of quarterly and annually NLFS figures in the StatBank on our
webpage. The quarterly CV and SE figures are published in the StatBank table
http://www.ssb.no/en/table/09937 and annual figures in
http://www.ssb.no/en/table/09938.
Some of the results are presented and discussed in this report. Average of quarterly
standard error in 2011 and 2012 for total unemployment and total employment are
5.1 and 0.33 per cent of the estimated values respectively.
Eurostat has proposed new precision requirements. One of the proposed
requirements is about the standard error for the estimated annual average of the
proportion of unemployed at NUTS 2 level (region). Our calculations show that we
will fulfil this proposed requirement for all the 7 Norwegian regions in 2010, 2011
and 2012.
The other proposed precision requirement, is about the standard error for the
difference in estimated proportion of unemployed at national level between two
successive quarters. In spite of the high overlap between samples in adjacent
quarters, the NLFS would not fulfil this new proposed precision requirement for
change estimates of unemployed persons. One reason for this is the low
autocorrelation for unemployment, so the high overlap of samples is of little help
for making good estimates of change in the unemployment. However, the high
overlap of sample makes the change estimates for employment better. Also, the
NLFS estimation procedure does not include any good register predictors for LFSunemployment, but is in stead optimized for making good quarterly county-divided
employment figures.
Also other sources of survey errors in the NLFS are described in this report.