Presentation at the Q2022 - Bias-variance trade off on the use of non-response weights in inequality estimates
👨 Josep Espasa Reig - Data Scientist @ LIS - Cross-National Data Center in Luxembourg
👋 Welcome to the repository of my presentation for the Q2022 - European Conference on Quality in Official Statistics conference in Vilnius!
Here you will find a short summary of the presentation and the paper in PDF format.
❓ Should inequality researchers use person-level weights instead of household-level ones if these are available?
In recent years, some National Statistical Offices have started producing weights at individual-level. Compared to those at household-level, these contain an extra adjustment by the non-response propensity of individuals. This adjustment might imply more variance in weights and thus larger Standard Errors for estimates. If the variables used to correct for individual non-response are not associated with those used for inequality analyses, then there wouldn't be any benefit using the individual-level weights.
The paper uses LIS datasets for Germany and US. When using person-level weights (instead of household-level ones):
- Inequality estimates increase slightly
- The gap in the coverage ratio with National Accounts gets reduced
- There is an increase in variance and therefore a reduction in the effective sample size
- The points above are especially true for the last decade of German surveys and for indicators such as the ‘Poverty Gap’ and ‘Poverty Headcount’
Researchers should therefore use person-level weights whenever available, as they are most likely reducing bias. They should, however, be aware that this adjustment comes at a cost of decreased precision in estimates.
- 📝 See the paper in PDF format here.