In this paper we show that the recent notion of regression depth can be used as a data-analytic tool to measure the amount of separation between successes and failures in the binary response framework. Extending this algorithm allows us to compute the overlap in data sets which are commonly fitted by logistic regression models. The overlap is the number of observations that would need to be removed to obtain complete or quasicomplete separation, i.e. the situation where the logistic regression parameters are no longer identifiable and the maximum likelihood estimate does not exist. It turns out that the overlap is often quite small. (orig.)Available from TIB Hannover: RR 8460(1999,25) / FIZ - Fachinformationszzentrum Karlsruhe / TIB - Techn...
We propose a Multivariate Logistic Distance (MLD) model for the analysis of multiple binary response...
Graphical representation of the effects highlighted by the logistic mixed-effect models which includ...
The logistic regression model is commonly used to describe the effect of one or several explanatory ...
In this paper we show that the recent notion of regression depth can be used as a data-analytic tool...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
The existence of maximum likelihood estimates for the binary response logistic regression model depe...
Graphical representation of the effects arising from the logistic mixed-effect mode fitted consideri...
Regression Analysis is a multivariate statistical methodology to investigate relationships and predi...
This thesis is a study of the detection of separation among the sample points in binary logistic reg...
Multicollinearity is a statistical phenomenon in which predictor variables in a logistic regression ...
Logistic mixed-effect model considering all predictors—Numeric overlap distance.</p
This text offers an introduction to binary logistic regression, a confirmatory technique for statist...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
We propose a Multivariate Logistic Distance (MLD) model for the analysis of multiple binary response...
Graphical representation of the effects highlighted by the logistic mixed-effect models which includ...
The logistic regression model is commonly used to describe the effect of one or several explanatory ...
In this paper we show that the recent notion of regression depth can be used as a data-analytic tool...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
The existence of maximum likelihood estimates for the binary response logistic regression model depe...
Graphical representation of the effects arising from the logistic mixed-effect mode fitted consideri...
Regression Analysis is a multivariate statistical methodology to investigate relationships and predi...
This thesis is a study of the detection of separation among the sample points in binary logistic reg...
Multicollinearity is a statistical phenomenon in which predictor variables in a logistic regression ...
Logistic mixed-effect model considering all predictors—Numeric overlap distance.</p
This text offers an introduction to binary logistic regression, a confirmatory technique for statist...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
We propose a Multivariate Logistic Distance (MLD) model for the analysis of multiple binary response...
Graphical representation of the effects highlighted by the logistic mixed-effect models which includ...
The logistic regression model is commonly used to describe the effect of one or several explanatory ...