2012
DOI: 10.1007/s10182-012-0197-2
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Illuminate the unknown: evaluation of imputation procedures based on the SAVE survey

Abstract: Questions about monetary variables (such as income, wealth or savings) Key words: Imputation methods, Monte-Carlo simulation, imputation evaluation, itemnonresponse, missing data, imputation, retransformation, sample surveys, SAVE JEL classification: C01, C81, C49 1 I would like to thank Michela Coppola (MEA) for very helpful support, as well as Axel Börsch-Supan (MEA), Daniel Schunk (Johannes Gutenberg University Mainz), Armin Rick (University of Chicago), Mathias Sommer, Hendrik Jürges (Universität Wuppert… Show more

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Cited by 16 publications
(11 citation statements)
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“…This should increase the efficiency of estimates -based on the larger number of observations -and reduce the non-response bias. 7 Missing observations in our dataset are therefore imputed using an iterative multiple imputation procedure based on a MarkovChain Monte-Carlo method (Schunk, 2008;Ziegelmeyer, 2013). We use five multiply imputed data sets for our analysis and results are derived by using Rubin's rule (Rubin, 1987(Rubin, , 1996.…”
Section: Datamentioning
confidence: 99%
“…This should increase the efficiency of estimates -based on the larger number of observations -and reduce the non-response bias. 7 Missing observations in our dataset are therefore imputed using an iterative multiple imputation procedure based on a MarkovChain Monte-Carlo method (Schunk, 2008;Ziegelmeyer, 2013). We use five multiply imputed data sets for our analysis and results are derived by using Rubin's rule (Rubin, 1987(Rubin, , 1996.…”
Section: Datamentioning
confidence: 99%
“…We observe that respondents who experienced adverse crisis effects show higher financial wealth than those who were not negatively affected by the crisis (Panel A). As Bucher-Koenen and Ziegelmeyer (2013) clarify, this surprising observation is explained by the fact that the respondents whose wealth was reduced in the crisis were active on financial markets and profited from the markets' resurgence. Typically, these are individuals with high financial literacy.…”
Section: Crisis Effectsmentioning
confidence: 99%
“…This should increase the efficiency of estimates -based on the larger number of observations -and reduce the item non-response bias. 3 Missing observations in our dataset are therefore imputed using an iterative multiple imputation procedure based on a MarkovChain Monte-Carlo method (Schunk, 2008;Ziegelmeyer, 2013). We use five multiply imputed data sets for our analysis and results are derived by using Rubin's rule (Rubin, 1987(Rubin, , 1996.…”
Section: Datamentioning
confidence: 99%