For ordinal log-linear models, the estimation of the parameter reflecting the linear-by-linear measure of association has long been a topic for the analysis of dependence for contingency tables. Typically, iterative procedures (including Newton’s method) are used to determine the maximum likelihood estimate of the parameter. Recently Beh and Farver (2009, ANZJS, 51, 335–352) show by way of example three reliable and accurate noniterative techniques that can be used to estimate the parameter and extended this study by examining their reliability computationally. This paper further investigates the reliability of the non-iterative procedures when compared with Newton’s method for estimating this association parameter and considers the impact ...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Pairwise maximum likelihood (PML) estimation is developed for factor analysis models with ordinal da...
Ordinal variables are common in many empirical investigations in the social and behavioral sciences....
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
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...
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...
Tools of algebraic statistics combined with MCMC algorithms have been used in contingency table anal...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
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...
Log-linear and logistic models can be fitted to data in contingency tables either by an iterative pr...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
none2noLatent variable models represent a useful tool in different fields of research in which the c...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Pairwise maximum likelihood (PML) estimation is developed for factor analysis models with ordinal da...
Ordinal variables are common in many empirical investigations in the social and behavioral sciences....
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
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...
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...
Tools of algebraic statistics combined with MCMC algorithms have been used in contingency table anal...
The paper presents an analysis of association in a contingency table using log-linear models. The fo...
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...
Log-linear and logistic models can be fitted to data in contingency tables either by an iterative pr...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
none2noLatent variable models represent a useful tool in different fields of research in which the c...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Pairwise maximum likelihood (PML) estimation is developed for factor analysis models with ordinal da...
Ordinal variables are common in many empirical investigations in the social and behavioral sciences....