The likelihood of a set of binary dependent outcomes, with or without explanatory variables, is expressed as a product of conditional probabilities each of which is assumed to be logistic. The models are called regressive logistic models. They provide a simple but relatively unknown parametrization of the multivariate distribution. They have the theoretical and practical advantage that they can be analyzed and fitted as in logistic regression for independent outcomes, and with the same computer programs. The paper is largely expository and is intended to motivate the development and usage of the regressive logistic models. The discussion includes serially dependent outcomes, equally predictive outcomes, more specialized patterns of dependen...
The categorized data that will be analyzed in this paper will be of the type that will use the logis...
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
This text offers an introduction to binary logistic regression, a confirmatory technique for statist...
A regressive logistic model for the analysis of data with dependent binary observations is construct...
The regression model with categorical dependent variable is a natural generalization of the model wi...
Rather than construction of a multivariate distribution from given univariate or bivariate margins,...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
The logistic regression originally is intended to explain the relationship between the probability o...
This article presents an overview of the logistic regression model for dependent variables having tw...
A well-established approach to modeling clustered data introduces random effects in the model of int...
Logistic regression is used to obtain the odds ratio in the presence of more than one explanatory va...
International audienceThe model's coefficients can be interpreted via the odds and odds ratio, which...
This bibliography collects articles illustrating the application of various multivariate techniques ...
The categorized data that will be analyzed in this paper will be of the type that will use the logis...
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
This text offers an introduction to binary logistic regression, a confirmatory technique for statist...
A regressive logistic model for the analysis of data with dependent binary observations is construct...
The regression model with categorical dependent variable is a natural generalization of the model wi...
Rather than construction of a multivariate distribution from given univariate or bivariate margins,...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
The logistic regression originally is intended to explain the relationship between the probability o...
This article presents an overview of the logistic regression model for dependent variables having tw...
A well-established approach to modeling clustered data introduces random effects in the model of int...
Logistic regression is used to obtain the odds ratio in the presence of more than one explanatory va...
International audienceThe model's coefficients can be interpreted via the odds and odds ratio, which...
This bibliography collects articles illustrating the application of various multivariate techniques ...
The categorized data that will be analyzed in this paper will be of the type that will use the logis...
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
This text offers an introduction to binary logistic regression, a confirmatory technique for statist...