An Investigation of Methods for Missing Data in Hierarchical Models for Discrete Data
Hierarchical models are applicable to modeling data from complex surveys or longitudinal data when a clustered or multistage sample design is employed. The focus of this thesis is to investigate inference for discrete hierarchical models in the presence of missing data. This thesis is divided into t...
Main Author: | Ahmed, Muhamad Rashid |
---|---|
Language: | en |
Published: |
2011
|
Subjects: | |
Online Access: | http://hdl.handle.net/10012/5813 |
Similar Items
-
An Investigation of Methods for Missing Data in Hierarchical Models for Discrete Data
by: Ahmed, Muhamad Rashid
Published: (2011) -
Missing Data Methods for Clustered Longitudinal Data
by: Modur, Sharada P.
Published: (2010) -
Multiple Imputation for Two-Level Hierarchical Models with Categorical Variables and Missing at Random Data
Published: (2016) -
The Role of Missing Data Imputation in Clinical Studies
by: Peng, Zhimin
Published: (2018) -
Systematically Missing Subject-Level Data in Longitudinal Research Synthesis
by: Kline, David
Published: (2015)