The analysis of incomplete contingency tables is a practical and an interesting problem. In this paper, we provide characterizations for the various missing mechanisms of a variable in terms of response and non-response odds for two and three dimensional incomplete tables. Log-linear parametrization and some distinctive properties of the missing data models for the above tables are discussed. All possible cases in which data on one, two or all variables may be missing are considered. We study the missingness of each variable in a model, which is more insightful for analyzing cross-classified data than the missingness of the outcome vector. For sensitivity analysis of the incomplete tables, we propose easily verifiable procedures to evaluate...
Using standard missing data taxonomy, due to Rubin and co-workers, and simple algebraic derivations,...
Presented at the NCRN Meeting Spring 2016 in Washington DC on May 9-10, 2016; see http://www.ncrn.in...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
Consider the sample of two binary variables X and Y with some missing structure within X or Y. The k...
We review some issues related to the implications of different missing data mechanisms on statistica...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
In missing data analysis, there is often a need to assess the sensitivity of key inferences to depar...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
In this paper we compare some modern algorithms i.e. Direct Maximization of the Likelihood (DML), th...
We describe and illustrate approaches to Bayesian inference in partially observed contingency tables...
Mechanisms of missing data and methods are described in this thesis. Three mechanisms are considered...
Estimating causal effects from incomplete data requires additional and inherently untestable assumpt...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
The objective of this thesis is to evaluate different methods of dealing with missing values in data...
Using standard missing data taxonomy, due to Rubin and co-workers, and simple algebraic derivations,...
Presented at the NCRN Meeting Spring 2016 in Washington DC on May 9-10, 2016; see http://www.ncrn.in...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
Consider the sample of two binary variables X and Y with some missing structure within X or Y. The k...
We review some issues related to the implications of different missing data mechanisms on statistica...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
In missing data analysis, there is often a need to assess the sensitivity of key inferences to depar...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
In this paper we compare some modern algorithms i.e. Direct Maximization of the Likelihood (DML), th...
We describe and illustrate approaches to Bayesian inference in partially observed contingency tables...
Mechanisms of missing data and methods are described in this thesis. Three mechanisms are considered...
Estimating causal effects from incomplete data requires additional and inherently untestable assumpt...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
The objective of this thesis is to evaluate different methods of dealing with missing values in data...
Using standard missing data taxonomy, due to Rubin and co-workers, and simple algebraic derivations,...
Presented at the NCRN Meeting Spring 2016 in Washington DC on May 9-10, 2016; see http://www.ncrn.in...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...