Working with missing data: imputation of nonresponse items in categorical survey data with a non-monotone missing pattern (Q2336377)
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| Language | Label | Description | Also known as |
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| English | Working with missing data: imputation of nonresponse items in categorical survey data with a non-monotone missing pattern |
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Working with missing data: imputation of nonresponse items in categorical survey data with a non-monotone missing pattern (English)
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19 November 2019
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Summary: The imputation of missing data is often a crucial step in the analysis of survey data. This study reviews typical problems with missing data and discusses a method for the imputation of missing survey data with a large number of categorical variables which do not have a monotone missing pattern. We develop a method for constructing a monotone missing pattern that allows for imputation of categorical data in data sets with a large number of variables using a model-based MCMC approach. We report the results of imputing the missing data from a case study, using educational, sociopsychological, and socioeconomic data from the National Latino and Asian American Study (NLAAS). We report the results of multiply imputed data on a substantive logistic regression analysis predicting socioeconomic success from several educational, sociopsychological, and familial variables. We compare the results of conducting inference using a single imputed data set to those using a combined test over several imputations. Findings indicate that, for all variables in the model, all of the single tests were consistent with the combined test.
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