Taking "Don't Knows" as Valid Responses: A Complete Random Imputation of Missing Data

Discussion Papers 442, 22 S.

Martin Kroh

2004. Sep.

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Published in: Quality & Quantity 40 (2006) Heft 2, 225- 244

Abstract

Incomplete data is a common problem of survey research. Recent work on multiple imputation techniques has increased analysts' awareness of the biasing effects of missing data and has also provided a convenient solution. Imputation methods replace non-response with estimates of the unobserved scores. In many instances, however, non-response to a stimulus does not result from measurement problems that inhibit accurate surveying of empirical reality, but from the inapplicability of the survey question. In such cases, existing imputation techniques replace valid non-response with counterfactual estimates of a situation in which the stimulus is applicable to all respondents. This paper suggests an alternative imputation procedure for incomplete data for which no true score exists: multiple complete random imputation, which overcomes the biasing effects of missing data and allows analysts to model respondents' valid "I don't know" answers.



JEL-Classification: C81;D72;D80
Keywords: Missing data; Incomplete data; Non-response; Multiple imputation; Survey methodology; Mixture regression models; Vote choice
Frei zugängliche Version: (econstor)
http://hdl.handle.net/10419/18294

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