Authors
Matthew Blackwell, James Honaker, Gary King
Publication date
2017
Journal
Sociological Methods & Research
Volume
46
Issue
3
Pages
303-341
Description
Although social scientists devote considerable effort to mitigating measurement error during data collection, they often ignore the issue during data analysis. And although many statistical methods have been proposed for reducing measurement error-induced biases, few have been widely used because of implausible assumptions, high levels of model dependence, difficult computation, or inapplicability with multiple mismeasured variables. We develop an easy-to-use alternative without these problems; it generalizes the popular multiple imputation (MI) framework by treating missing data problems as a limiting special case of extreme measurement error and corrects for both. Like MI, the proposed framework is a simple two-step procedure, so that in the second step researchers can use whatever statistical method they would have if there had been no problem in the first place. We also offer empirical illustrations …
Total citations
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Scholar articles
M Blackwell, J Honaker, G King - URL: http://gking. harvard. edu/files/gking/files/measure …, 2012