Analyzing Incomplete Political Science Data: An Alternative Algorithm for Multiple Imputation

We propose a remedy for the discrepancy between the way political scientists analyze data with missing values and the recommendations of the statistics community. Methodologists and statisticians agree that “multiple imputation” is a superior approach to the problem of missing data scattered through...

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Bibliographic Details
Published inThe American political science review Vol. 95; no. 1; pp. 49 - 69
Main Authors King, Gary, Honaker, James, Joseph, Anne, Scheve, Kenneth
Format Journal Article
LanguageEnglish
Published Washington Cambridge University Press 01.03.2001
American Political Science Association
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ISSN0003-0554
1537-5943
DOI10.1017/s0003055401000235

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Summary:We propose a remedy for the discrepancy between the way political scientists analyze data with missing values and the recommendations of the statistics community. Methodologists and statisticians agree that “multiple imputation” is a superior approach to the problem of missing data scattered through one’s explanatory and dependent variables than the methods currently used in applied data analysis. The discrepancy occurs because the computational algorithms used to apply the best multiple imputation models have been slow, difficult to implement, impossible to run with existing commercial statistical packages, and have demanded considerable expertise. We adapt an algorithm and use it to implement a general-purpose, multiple imputation model for missing data. This algorithm is considerably faster and easier to use than the leading method recommended in the statistics literature. We also quantify the risks of current missing data practices, illustrate how to use the new procedure, and evaluate this alternative through simulated data as well as actual empirical examples. Finally, we offer easy-to-use software that implements all methods discussed.
Bibliography:istex:400CA4FE8D57AB77C6A108EC5C825868B0A258B2
ark:/67375/6GQ-D3FHFM7V-9
PII:S0003055401000235
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ISSN:0003-0554
1537-5943
DOI:10.1017/s0003055401000235