Over the past decade, a series of procedures has been introduced to estimate, using a non-iterative method, the linear-by-linear association parameter of an ordinal log-linear model. This paper will examine the two key non-iteratively determined estimates of the parameter for the analysis of the association between the two categorical variables that form a contingency table; these are the log and the Beh-Davy non-iterative estimates, referred to simply as the LogNI and the BDNI estimates, respectively. Such an examination will focus on determining their asymptotic characteristics. To do so, a computational study was undertaken for tables of varying sizes to show that these two estimates are asymptotically unbiased. It is also shown that bot...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Notwithstanding a large body of literature on log-linear models and odds ratios, no general marginal...
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
Ordinal log-linear models (OLLM) are commonly used to analyse the association in a contingency table...
For ordinal log-linear models, the estimation of the parameter reflecting the linear-by-linear measu...
Log-linear modeling is a popular statistical tool for analysing a contingency table. This presentati...
Ordinal log-linear models (OLLM's) are amid the most widely used and powerful techniques to mod...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
Tools of algebraic statistics combined with MCMC algorithms have been used in contingency table anal...
Ordinal log-linear models (OLLM’s) are amid the most widely used and powerful techniques to model as...
Abstract Background Log-linear association models have been extensively used to investigate the patt...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
In several social and biomedical investigations the collected data can be classified into several ca...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Notwithstanding a large body of literature on log-linear models and odds ratios, no general marginal...
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
Ordinal log-linear models (OLLM) are commonly used to analyse the association in a contingency table...
For ordinal log-linear models, the estimation of the parameter reflecting the linear-by-linear measu...
Log-linear modeling is a popular statistical tool for analysing a contingency table. This presentati...
Ordinal log-linear models (OLLM's) are amid the most widely used and powerful techniques to mod...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
Tools of algebraic statistics combined with MCMC algorithms have been used in contingency table anal...
Ordinal log-linear models (OLLM’s) are amid the most widely used and powerful techniques to model as...
Abstract Background Log-linear association models have been extensively used to investigate the patt...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
In several social and biomedical investigations the collected data can be classified into several ca...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Notwithstanding a large body of literature on log-linear models and odds ratios, no general marginal...