Abstract
This paper studies households’ response behaviour in a wealth survey. We analyse how unit non-response and item non-response contribute to the estimated distribution of wealth. Our findings imply that wealth inequality is underestimated in the survey. The downward bias is originating from item non-response and not from unit non-response. Wealthier households are less likely to provide answers to wealth-related questions. As a result, the level of net wealth is underestimated and the top tail of its distribution is missing. Imputation can eliminate biases throughout most of the wealth distribution but does not recover the estimates in the top tail.
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Notes
Examples of wealth surveys are the Bank of Italy’s SHIW survey, the Federal Reserve Board’s SCF, the Bank of Spain’s EFF and the ECB’s HFCS.
There are actually only four income components that need to be imputed, because one of the income components, private pensions, had no missing observations. See “Appendix 1” Table 2 for the related statistics.
The following description of methods proceeds from the description of the commands “mi impute chained” and “mi impute pmm” in the Stata manual.
As imputed values are drawn from the observed data, this method also preserves the distribution of the observed data. We have tested alternative imputation methods such as the linear regression, but this gives a very similar distribution of the imputed data to that from predictive mean matching.
This weak link between net wealth and unit response is not caused by controlling for income deciles in the regressions, as the link is still weak when the income deciles are excluded from the regression.
The Estonian HFCS aims at oversampling the richest households. The oversampling is based on personal incomes of the survey contact people in the period prior to the survey (the income data are obtained from the registers). To test the sensitivity of our estimates to oversampling, we re-estimated the results shown in Tables 2 and 4 removing the oversampled contact persons randomly. This had no significant effect on the estimation results, and therefore the estimates based on this exercise are not reported.
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Authors declare that they have no conflict of interest and the research has been conducted without involving animal participants and the data of human participants has been treated by meeting confidentiality standards. The views expressed are those of the authors and do not necessarily represent the official views of the Bank of Estonia or the Eurosystem.
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The authors would like to thank the participants at the Bank of Estonia research seminar, at the HFCN meeting in Krakow and at the Joint Statistical Meetings conference in Denver, Colorado for their insightful comments.
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Meriküll, J., Rõõm, T. Are survey data underestimating the inequality of wealth?. Empir Econ 62, 339–374 (2022). https://doi.org/10.1007/s00181-021-02030-6
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DOI: https://doi.org/10.1007/s00181-021-02030-6
Keywords
- Wealth distribution
- Unit non-response
- Item non-response
- Participation bias
- Wealth survey
- Wealth inequality
- Household Finance and Consumption Survey
- Estonia