The person-centered approach in categorical data analysis is introduced as a complementary approach to the variable-centered approach. The former uses persons, animals, or objects on the basis of their combination of characteristics which can be displayed in multiway contingency tables. Configural Frequency Analysis (CFA) and log-linear modeling (LLM) are the two most prominent (and related) statistical methods. Both compare observed frequencies (foi…k) with expected frequencies (fei…k). While LLM uses primarily a model-fitting approach, CFA analyzes residuals of non-fitting models. Residuals with significantly more observed than expected frequencies (foi…k>fei…k) are called types, while residuals with significantly less observed than expec...
This paper presents a categorical data analysis by employing the use of the statistical programs R a...
A significant aspect of data modeling with categorical predictors is the definition of a saturated m...
The log-linear model is described as a framework for analyzing effects in multi-dimensional continge...
This book offers a comprehensible overview of the statistical approach called the person-centered me...
Configural frequency analysis and log-linear modeling are presented as person-centered analytic appr...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
This work presents characteristics of categorical data, their presentation and possible models of st...
Agreement tables are defined as squares rxr contingency tables with identical row and column categor...
In several social and biomedical investigations the collected data can be classified into several ca...
The aim of this paper is to demonstrate the R package conting for the Bayesian analysis of complet...
Contingency tables (or cross tables) classify elements of populations or samples (of varying kinds) ...
This thesis introduces statistical methods for categorical data. These methods are especially used i...
Combining theory and applications, this book presents models and methods for the analysis of two‐ an...
Multidimensional contingency tables are suitable tool for capturing the count of observations of mul...
The use of general linear regression methods for the analysis of categorical data is recommended. ...
This paper presents a categorical data analysis by employing the use of the statistical programs R a...
A significant aspect of data modeling with categorical predictors is the definition of a saturated m...
The log-linear model is described as a framework for analyzing effects in multi-dimensional continge...
This book offers a comprehensible overview of the statistical approach called the person-centered me...
Configural frequency analysis and log-linear modeling are presented as person-centered analytic appr...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
This work presents characteristics of categorical data, their presentation and possible models of st...
Agreement tables are defined as squares rxr contingency tables with identical row and column categor...
In several social and biomedical investigations the collected data can be classified into several ca...
The aim of this paper is to demonstrate the R package conting for the Bayesian analysis of complet...
Contingency tables (or cross tables) classify elements of populations or samples (of varying kinds) ...
This thesis introduces statistical methods for categorical data. These methods are especially used i...
Combining theory and applications, this book presents models and methods for the analysis of two‐ an...
Multidimensional contingency tables are suitable tool for capturing the count of observations of mul...
The use of general linear regression methods for the analysis of categorical data is recommended. ...
This paper presents a categorical data analysis by employing the use of the statistical programs R a...
A significant aspect of data modeling with categorical predictors is the definition of a saturated m...
The log-linear model is described as a framework for analyzing effects in multi-dimensional continge...