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Multiple Imputation of Missing Categorical and Continuous Values via Bayesian Mixture Models With Local Dependence
by
Reiter, Jerome P.
, Murray, Jared S.
in
Applications and Case Studies
/ Bayesian analysis
/ Bayesian method
/ Continuous data
/ data collection
/ Dependence
/ equations
/ Hierarchical mixture model
/ income
/ Missing data
/ Mixtures
/ Multiple imputation
/ multivariate analysis
/ Nonparametric Bayes
/ Property
/ Sampling
/ Simulation
/ Statistics
/ Stick-breaking process
/ surveys
/ Values
/ Variables
2016
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Multiple Imputation of Missing Categorical and Continuous Values via Bayesian Mixture Models With Local Dependence
by
Reiter, Jerome P.
, Murray, Jared S.
in
Applications and Case Studies
/ Bayesian analysis
/ Bayesian method
/ Continuous data
/ data collection
/ Dependence
/ equations
/ Hierarchical mixture model
/ income
/ Missing data
/ Mixtures
/ Multiple imputation
/ multivariate analysis
/ Nonparametric Bayes
/ Property
/ Sampling
/ Simulation
/ Statistics
/ Stick-breaking process
/ surveys
/ Values
/ Variables
2016
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Do you wish to request the book?
Multiple Imputation of Missing Categorical and Continuous Values via Bayesian Mixture Models With Local Dependence
by
Reiter, Jerome P.
, Murray, Jared S.
in
Applications and Case Studies
/ Bayesian analysis
/ Bayesian method
/ Continuous data
/ data collection
/ Dependence
/ equations
/ Hierarchical mixture model
/ income
/ Missing data
/ Mixtures
/ Multiple imputation
/ multivariate analysis
/ Nonparametric Bayes
/ Property
/ Sampling
/ Simulation
/ Statistics
/ Stick-breaking process
/ surveys
/ Values
/ Variables
2016
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Multiple Imputation of Missing Categorical and Continuous Values via Bayesian Mixture Models With Local Dependence
Journal Article
Multiple Imputation of Missing Categorical and Continuous Values via Bayesian Mixture Models With Local Dependence
2016
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Overview
We present a nonparametric Bayesian joint model for multivariate continuous and categorical variables, with the intention of developing a flexible engine for multiple imputation of missing values. The model fuses Dirichlet process mixtures of multinomial distributions for categorical variables with Dirichlet process mixtures of multivariate normal distributions for continuous variables. We incorporate dependence between the continuous and categorical variables by (1) modeling the means of the normal distributions as component-specific functions of the categorical variables and (2) forming distinct mixture components for the categorical and continuous data with probabilities that are linked via a hierarchical model. This structure allows the model to capture complex dependencies between the categorical and continuous data with minimal tuning by the analyst. We apply the model to impute missing values due to item nonresponse in an evaluation of the redesign of the Survey of Income and Program Participation (SIPP). The goal is to compare estimates from a field test with the new design to estimates from selected individuals from a panel collected under the old design. We show that accounting for the missing data changes some conclusions about the comparability of the distributions in the two datasets. We also perform an extensive repeated sampling simulation using similar data from complete cases in an existing SIPP panel, comparing our proposed model to a default application of multiple imputation by chained equations. Imputations based on the proposed model tend to have better repeated sampling properties than the default application of chained equations in this realistic setting. Supplementary materials for this article are available online.
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