In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parameters in log-linear models. Modified versions of the iterative proportional fitting and Newton-Raphson algorithms are described that work on the minimal sufficient statistics rather than on the usual counts in the full contingency table. This is desirable if the contingency table becomes too large to store. Special attention is given to log-linear Item Response Theory (IRT) models that are used for the analysis of educational and psychological test data. To calculate the necessary expected sufficient statistics and other marginal sums of the table, a method is described that avoids summing large numbers of elementary cell frequencies by writin...
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Item response theory (IRT) models are a class of statistical models used by researchers to describe ...
In this paper algorithms are described for obtaining the maximum likelihood estimates of the paramet...
For analyzing item response data, item response theory (IRT) models treat the discrete responses to ...
Log-multiplicative association (LMA) models, special cases of log-linear models, can be used as mult...
There are many numerical procedures for calculating the maximum likelihood estimates for loglinear m...
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 ...
Log-linear and logistic models can be fitted to data in contingency tables either by an iterative pr...
A loglinear IRT model is proposed that relates polytomously scored item responses to a multidimensio...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
In this article, we combine results from the theory of linear exponential families, polyhedral geome...
The Rasch Model and various extensions of this model can be formulated as a quasi loglinear model fo...
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Item response theory (IRT) models are a class of statistical models used by researchers to describe ...
In this paper algorithms are described for obtaining the maximum likelihood estimates of the paramet...
For analyzing item response data, item response theory (IRT) models treat the discrete responses to ...
Log-multiplicative association (LMA) models, special cases of log-linear models, can be used as mult...
There are many numerical procedures for calculating the maximum likelihood estimates for loglinear m...
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 ...
Log-linear and logistic models can be fitted to data in contingency tables either by an iterative pr...
A loglinear IRT model is proposed that relates polytomously scored item responses to a multidimensio...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
In this article, we combine results from the theory of linear exponential families, polyhedral geome...
The Rasch Model and various extensions of this model can be formulated as a quasi loglinear model fo...
Estimating linear-by-linear association has long been an important topic in the analysis of continge...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Item response theory (IRT) models are a class of statistical models used by researchers to describe ...