Missing observations often occur in cross-classified data collected during observational, clinical, and public health studies. Inappropriate treatment of missing data can reduce statistical power and give biased results. This work extends the Baker, Rosenberger and Dersimonian modeling approach to compute maximum likelihood estimates for cell counts in three-way tables with missing data, and studies the association between two dichotomous variables while controlling for a third variable in 2×2×K tables. This approach is applied to the Behavioral Risk Factor Surveillance System data. Simulation studies are used to investigate the efficiency of estimation of the common odds ratio
For a two–way contingency table with categorical variables, local odds ratios are commonly used to d...
We derive estimates of expected cell counts for $I\times J\times K$ contingency tables where the str...
Abstract: Clustered multinomial responses are common in public health studies. In this situation, th...
Missing observations often occur in cross-classified data collected during observational, clinical, ...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
We formulate likelihood-based ecological inference for 2×2 tables with missing cell counts as an inc...
The analysis of incomplete contingency tables is a practical and an interesting problem. In this pap...
For a two-way contingency table, odds ratios are commonly used to describe the relationships between...
We describe and illustrate approaches to Bayesian inference in partially observed contingency tables...
Maximum likelihood estimate(MLE) is obtained from the partial log-likelihood function for the cell p...
The paper considers general multiplicative models for complete and incomplete contingency tables tha...
AbstractThe paper considers general multiplicative models for complete and incomplete contingency ta...
For a two–way contingency table with categorical variables, local odds ratios are commonly used to d...
We derive estimates of expected cell counts for $I\times J\times K$ contingency tables where the str...
Abstract: Clustered multinomial responses are common in public health studies. In this situation, th...
Missing observations often occur in cross-classified data collected during observational, clinical, ...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
Missing observations in cross-classified data are an extremely common problem in the process of rese...
We formulate likelihood-based ecological inference for 2×2 tables with missing cell counts as an inc...
The analysis of incomplete contingency tables is a practical and an interesting problem. In this pap...
For a two-way contingency table, odds ratios are commonly used to describe the relationships between...
We describe and illustrate approaches to Bayesian inference in partially observed contingency tables...
Maximum likelihood estimate(MLE) is obtained from the partial log-likelihood function for the cell p...
The paper considers general multiplicative models for complete and incomplete contingency tables tha...
AbstractThe paper considers general multiplicative models for complete and incomplete contingency ta...
For a two–way contingency table with categorical variables, local odds ratios are commonly used to d...
We derive estimates of expected cell counts for $I\times J\times K$ contingency tables where the str...
Abstract: Clustered multinomial responses are common in public health studies. In this situation, th...