This paper considers the role of covariates when using predicted probabilities to interpret main effects and interactions in logit models. While predicted probabilities are very intuitive for interpreting main effects and interactions, the pattern of results depends on the contribution of covariates. We introduce a concept called the covariate contribution, which reflects the aggregate contribution of all of the remaining predictors (covariates) in the model and a family of tools to help visualize the relationship between predictors and the predicted probabilities across a variety of covariate contributions. We believe this strategy and the accompanying tools can help researchers who wish to use predicted probabilities as an interpretive fr...
The most familiar reason to use the LOGISTIC procedure is to model binary (yes/no, 1/0) categorical ...
The likelihood of a set of binary dependent outcomes, with or without explanatory variables, is expr...
A binary response model is a regression model in which the dependentvariable Y is a binary random va...
This paper introduces new statistical models, Boolean logit and probit, that allow researchers to mo...
This article presents a method for estimating and interpreting total, direct, and indirect effects i...
Multinomial logit (also termed multi-logit) models permit the analysis of the statistical relation b...
Methods textbooks in sociology and other social sciences routinely recommend the use of the logit or...
The most familiar reason to use PROC LOGISTIC is to model binary (yes/no, 1/0) categorical outcome v...
In regression models for categorical data a linear model is typically related to the response variab...
We examine several approaches for inferring logit models from empirical margins of predictor covaria...
Based on recent work by Fox and Andersen (2006), this paper describes substantial extensions to the ...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is slowly gaining acceptance in the social sciences, and fills an important nich...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
The classical logit and probit models allow to explain a dichotomous dependent variable as a functio...
The most familiar reason to use the LOGISTIC procedure is to model binary (yes/no, 1/0) categorical ...
The likelihood of a set of binary dependent outcomes, with or without explanatory variables, is expr...
A binary response model is a regression model in which the dependentvariable Y is a binary random va...
This paper introduces new statistical models, Boolean logit and probit, that allow researchers to mo...
This article presents a method for estimating and interpreting total, direct, and indirect effects i...
Multinomial logit (also termed multi-logit) models permit the analysis of the statistical relation b...
Methods textbooks in sociology and other social sciences routinely recommend the use of the logit or...
The most familiar reason to use PROC LOGISTIC is to model binary (yes/no, 1/0) categorical outcome v...
In regression models for categorical data a linear model is typically related to the response variab...
We examine several approaches for inferring logit models from empirical margins of predictor covaria...
Based on recent work by Fox and Andersen (2006), this paper describes substantial extensions to the ...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is slowly gaining acceptance in the social sciences, and fills an important nich...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
The classical logit and probit models allow to explain a dichotomous dependent variable as a functio...
The most familiar reason to use the LOGISTIC procedure is to model binary (yes/no, 1/0) categorical ...
The likelihood of a set of binary dependent outcomes, with or without explanatory variables, is expr...
A binary response model is a regression model in which the dependentvariable Y is a binary random va...