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The MI Procedure
The MI Procedure
Overview: MI Procedure
Getting Started: MI Procedure
Syntax: MI Procedure
PROC MI Statement
BY Statement
CLASS Statement
EM Statement
FREQ Statement
MCMC Statement
MONOTONE Statement
TRANSFORM Statement
VAR Statement
Details: MI Procedure
Descriptive Statistics
EM Algorithm for Data with Missing Values
Statistical Assumptions for Multiple Imputation
Missing Data Patterns
Imputation Methods
Regression Method for Monotone Missing Data
Predictive Mean Matching Method for Monotone Missing Data
Propensity Score Method for Monotone Missing Data
Discriminant Function Method for Monotone Missing Data
Logistic Regression Method for Monotone Missing Data
MCMC Method for Arbitrary Missing Data
Producing Monotone Missingness with the MCMC Method
MCMC Method Specifications
Checking Convergence in MCMC
Input Data Sets
Output Data Sets
Combining Inferences from Multiply Imputed Data Sets
Multiple Imputation Efficiency
Imputer’s Model Versus Analyst’s Model
Parameter Simulation versus Multiple Imputation
Summary of Issues in Multiple Imputation
ODS Table Names
ODS Graphics
Examples: MI Procedure
EM Algorithm for MLE
Propensity Score Method
Regression Method
Logistic Regression Method for CLASS Variables
Discriminant Function Method for CLASS Variables
MCMC Method
Producing Monotone Missingness with MCMC
Checking Convergence in MCMC
Saving and Using Parameters for MCMC
Transforming to Normality
Multistage Imputation
References
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Copyright © 2009 by SAS Institute Inc., Cary, NC, USA. All rights reserved.
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