Log-linear modeling is a popular statistical tool for analysing a contingency table. This presentation focuses on an alternative approach to modeling ordinal categorical data. The technique, based on orthogonal polynomials, provides a much simpler method of model fitting than the conventional approach of maximum likelihood estimation, as it does not require iterative calculations nor the fitting and re-fitting to search for the best model. Another advantage is that quadratic arid higher order effects can readily be included, in contrast to conventional tog-linear models which incorporate linear terms only. The focus of the discussion is the application of the new parameter estimation technique to multi-way contingency tables with at least o...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
This paper presents a partition of Pearson's chi-squared statistic for singly ordered two-way contin...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
Over the past decade, a series of procedures has been introduced to estimate, using a non-iterative ...
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...
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 ...
Ordinal log-linear models (OLLM's) are amid the most widely used and powerful techniques to mod...
Tools of algebraic statistics combined with MCMC algorithms have been used in contingency table anal...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
abstract: the issue of how to parametrise standard log-linear model has been neglected to some exten...
Categorical data in contingency tables are collected in many investigations. In order to underst and...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
This paper presents a partition of Pearson's chi-squared statistic for singly ordered two-way contin...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
Over the past decade, a series of procedures has been introduced to estimate, using a non-iterative ...
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...
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 ...
Ordinal log-linear models (OLLM's) are amid the most widely used and powerful techniques to mod...
Tools of algebraic statistics combined with MCMC algorithms have been used in contingency table anal...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
abstract: the issue of how to parametrise standard log-linear model has been neglected to some exten...
Categorical data in contingency tables are collected in many investigations. In order to underst and...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
This paper presents a partition of Pearson's chi-squared statistic for singly ordered two-way contin...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...