Logit and probit models are designed to estimate latent variable models. However, there are cases that these estimates are used, even though the latent variable is fully observable. The most prominent examples are studies about obesity, where they calculate BMI based on two observed variables: weight and height squared. They translate BMI into a binary variable (e.g. obese or not obese) and this index is used to examine factors affecting obesity. This study determines the loss in efficiency of using logit/probit models versus the conventional OLS (e.g. with unknown variance). We also compare the marginal effects between these models. The results suggest that OLS is a more efficient than the logit/probit models when estimating the true coef...
Bivariate probit models are a common choice for scholars wishing to estimate causal effects in instr...
There is broad consensus that logistic regression is superior to ordinary least squares (OLS) regres...
AbstractIn this paper a nonparametric latent variable model is estimated without specifying the unde...
Logit and probit models are designed to estimate latent variable models. However, there are cases th...
A binary response model is a regression model in which the dependentvariable Y is a binary random va...
Logit and probit models are widely used in empirical sociological research. However, the common prac...
The paper proposes a method for overcoming the so-called latent scale-problem that prevents nested l...
Most of the results in this thesis are obtained for the logit/probit model for binary response data ...
A large number of different Pseudo-R2 measures for some common limited dependent variable models are...
2 ABSTRACT: A large number of different Pseudo-R measures for some common limited dependent variable...
Methods textbooks in sociology and other social sciences routinely recommend the use of the logit or...
In this article we develop a latent class model with class probabilities that depend on subject-spec...
This paper considers the role of covariates when using predicted probabilities to interpret main eff...
This article presents a method for estimating and interpreting total, direct, and indirect effects i...
A large number of different Pseudo-R"2 measures for some common limited dependent variable mode...
Bivariate probit models are a common choice for scholars wishing to estimate causal effects in instr...
There is broad consensus that logistic regression is superior to ordinary least squares (OLS) regres...
AbstractIn this paper a nonparametric latent variable model is estimated without specifying the unde...
Logit and probit models are designed to estimate latent variable models. However, there are cases th...
A binary response model is a regression model in which the dependentvariable Y is a binary random va...
Logit and probit models are widely used in empirical sociological research. However, the common prac...
The paper proposes a method for overcoming the so-called latent scale-problem that prevents nested l...
Most of the results in this thesis are obtained for the logit/probit model for binary response data ...
A large number of different Pseudo-R2 measures for some common limited dependent variable models are...
2 ABSTRACT: A large number of different Pseudo-R measures for some common limited dependent variable...
Methods textbooks in sociology and other social sciences routinely recommend the use of the logit or...
In this article we develop a latent class model with class probabilities that depend on subject-spec...
This paper considers the role of covariates when using predicted probabilities to interpret main eff...
This article presents a method for estimating and interpreting total, direct, and indirect effects i...
A large number of different Pseudo-R"2 measures for some common limited dependent variable mode...
Bivariate probit models are a common choice for scholars wishing to estimate causal effects in instr...
There is broad consensus that logistic regression is superior to ordinary least squares (OLS) regres...
AbstractIn this paper a nonparametric latent variable model is estimated without specifying the unde...