In this paper we develop a simple maximum likelihood estimator for probit models where the regressors have measurement error. We first assume precise information about the reliability ratios (or, equivalently, the proxy correlations) of the regressors. We then show how reasonable bounds for the parameter estimates can be obtained when only imprecise information is available. The analysis is also extended to situations where the measurement error has non-zero mean and is correlated with the true values of the regressors. An extensive simulation study shows that the estimator works very well, even in quite small samples. Finally the method is applied to data explaining sick leave in Swede
Binary tests classify items into two categories such as reject/accept, positive/negative or guilty/i...
On-site surveys are frequently used in empirical recreation demand studies. Several authors have alr...
We propose a semiparametric estimator for varying coefficient models when the regressors in the nonp...
This paper examines the effect of mismeasured discrete regressors in binary choice models. I examine...
This Master thesis investigates the semi-parametric estimation method Maximum Score of Manski (1988)...
This Master thesis investigates the semi-parametric estimation method Maximum Score of Manski (1988)...
This paper provides a few variants of a simple estimator for binary choice models with endogenous or...
The calibration of choice models produces a set of parameter estimates and an associated covariance ...
The calibration of choice models produces a set of parameter estimates and an associated covariance ...
In this paper we discuss the estimation of a logit binary response model. The sampling is choice-bas...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
In semiparametric binary response models, support conditions on the regressors are required to guara...
The calibration of choice models produces a set of parameter estimates and an associated covariance ...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
This paper introduces a new class of estimators based on minimization of the Cressie-Read (CR) power...
Binary tests classify items into two categories such as reject/accept, positive/negative or guilty/i...
On-site surveys are frequently used in empirical recreation demand studies. Several authors have alr...
We propose a semiparametric estimator for varying coefficient models when the regressors in the nonp...
This paper examines the effect of mismeasured discrete regressors in binary choice models. I examine...
This Master thesis investigates the semi-parametric estimation method Maximum Score of Manski (1988)...
This Master thesis investigates the semi-parametric estimation method Maximum Score of Manski (1988)...
This paper provides a few variants of a simple estimator for binary choice models with endogenous or...
The calibration of choice models produces a set of parameter estimates and an associated covariance ...
The calibration of choice models produces a set of parameter estimates and an associated covariance ...
In this paper we discuss the estimation of a logit binary response model. The sampling is choice-bas...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
In semiparametric binary response models, support conditions on the regressors are required to guara...
The calibration of choice models produces a set of parameter estimates and an associated covariance ...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
This paper introduces a new class of estimators based on minimization of the Cressie-Read (CR) power...
Binary tests classify items into two categories such as reject/accept, positive/negative or guilty/i...
On-site surveys are frequently used in empirical recreation demand studies. Several authors have alr...
We propose a semiparametric estimator for varying coefficient models when the regressors in the nonp...