Skip to main content
Log in

Taking ‘Don’t Knows’ as Valid Responses: A Multiple Complete Random Imputation of Missing Data

  • Published:
Quality and Quantity Aims and scope Submit manuscript

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.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  • P. D. Allison (2002) Missing Data. Sage Series: Quantitative applications in the social sciences Sage Thousand Oaks

    Google Scholar 

  • R. Alvarez C. Franklin (1994) ArticleTitleUncertainty and political perceptions Journal of Politics 56 671–688

    Google Scholar 

  • R. B. Anderweg G. A. Irwin (2002) Governance and Politics of the Netherlands Palgrave New York

    Google Scholar 

  • Anker, H. & Oppenhuis, E. (1997). Dutch Parliamentary Election Study 1994. Ann Arbor: ICPSR (Study Nr. 6740).

  • G. Arminger C. C. Clogg M. E. Sobel (Eds) (1995) Handbook of Statistical Modeling for the Social and Behavioral Sciences Plenum New York

    Google Scholar 

  • L. Bartels (1996) ArticleTitleUninformed votes: information effects in presidential elections American Journal of Political Science 40 194–230

    Google Scholar 

  • Böhning, D.& Seidel, W. (eds.) (2003). Recent developments in mixture models. Computational Statistics & Data Analysis 41 (Special Issue): 349–678.

  • van der Brug, W., van der Eijk, C. & Franklin, M. (2003). Designs for the empirical analysis of electoral preferences, utilities and choice. Paper prepared for the joint sessions of workshops of the ECPR in Edinburgh, March 2003.

  • S. Buuren Particlevan C. G. Oudshoorn (2000) Multivariate imputation by chained equations: MICE V1.0 User’s Manual TNO Preventie en Gezondheid Leiden

    Google Scholar 

  • C. Eijk Particlevan der (2002) ArticleTitleDesign issues in electoral research: taking care of (core) business Electoral Studies 21 189–206

    Google Scholar 

  • W. Greene (2000) Econometric Analysis EditionNumber4 Prentice Hall London

    Google Scholar 

  • J. Heckman (1979) ArticleTitleSample selection bias as a specification error Econometrica 47 153–161

    Google Scholar 

  • J. Honaker A. Joseph G. King K. Scheve N. Singh (1999) Amelia: A Program for Missing Data Harvard University Cambridge

    Google Scholar 

  • G. King J. Honacker A. Joseph K. Scheve (2001) ArticleTitleAnalyzing incomplete political science data: an alternative algorithm for multiple imputation American Political Science Review 95 49–69

    Google Scholar 

  • Kroh, M. & Eijk, C., van der. (2003). Utilities, Preferences and Choice. Paper presented at the joint sessions of workshops of the ECPR in Edinburgh.

  • N. Laird (1978) ArticleTitleNonparamteric maximum likelihood estimation of a mixture distribution Journal of the American Statistical Association 73 805–811

    Google Scholar 

  • R. Little (1992) ArticleTitleRegression with missing X’s: a review Journal of the American Statistical Association 87 1227–1237

    Google Scholar 

  • R. J. Little D. B. Rubin (1987) Statistical Analysis with Missing Data John Wiley New York

    Google Scholar 

  • Raghunathan, T. E., Solenberger, P. & Hoewyk, J., van. (2000). IVEware: Imputation and Variance Estimation Software: Installation Instructions and User Guide. Survey Research Center, Institute of Social Research, University of Michigan.

  • D. B. Rubin (1987) Multiple Imputation for Nonresponse in Surveys John Wiley New York

    Google Scholar 

  • J. L. Schafer (1997) Analysis of Incomplete Multivariate Data Chapman & Hall London

    Google Scholar 

  • R. Tourangeau L. J. Rips K. Rasinski (2000) The Psychology of Survey Response Cambridge University Press Cambridge

    Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to Martin Kroh.

Rights and permissions

Reprints and permissions

About this article

Cite this article

Kroh, M. Taking ‘Don’t Knows’ as Valid Responses: A Multiple Complete Random Imputation of Missing Data. Qual Quant 40, 225–244 (2006). https://doi.org/10.1007/s11135-005-5360-3

Download citation

  • Issue Date:

  • DOI: https://doi.org/10.1007/s11135-005-5360-3

Keywords

Navigation