We review some issues related to the implications of different missing data mechanisms on statistical inference for contingency tables and consider simulation studies to compare the results obtained under such models to those where the units with missing data are disregarded. We confirm that although, in general, analyses under the correct missing at random and missing completely at random models are more efficient even for small sample sizes, there are exceptions where they may not improve the results obtained by ignoring the partially classified data. We show that under the missing not at random (MNAR) model, estimates on the boundary of the parameter space as well as lack of identifiability of the parameters of saturated models may be as...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Abstract: This paper discusses identification, estimation and testing in panel data models with att...
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...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
The analysis of incomplete contingency tables is a practical and an interesting problem. In this pap...
Abstract: When data are missing due to at most one cause from some time to next time, we can make sa...
We describe and illustrate approaches to Bayesian inference in partially observed contingency tables...
International audienceMissing Not At Random (MNAR) values lead to significant biases in the data, si...
When data are missing at random, the missing-data mechanism can be ignored but this assumption is no...
Models for incomplete longitudinal data under missingness not at random have gained some popularity....
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
Many studies are affected by missing data, which complicates subsequent analyses for re-searchers. H...
AbstractWhen missing data are either missing completely at random (MCAR) or missing at random (MAR),...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Abstract: This paper discusses identification, estimation and testing in panel data models with att...
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...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
The analysis of incomplete contingency tables is a practical and an interesting problem. In this pap...
Abstract: When data are missing due to at most one cause from some time to next time, we can make sa...
We describe and illustrate approaches to Bayesian inference in partially observed contingency tables...
International audienceMissing Not At Random (MNAR) values lead to significant biases in the data, si...
When data are missing at random, the missing-data mechanism can be ignored but this assumption is no...
Models for incomplete longitudinal data under missingness not at random have gained some popularity....
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
Many studies are affected by missing data, which complicates subsequent analyses for re-searchers. H...
AbstractWhen missing data are either missing completely at random (MCAR) or missing at random (MAR),...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Abstract: This paper discusses identification, estimation and testing in panel data models with att...
Consider the sample of two binary variables X and Y with some missing structure within X or Y. The k...