Strong assumptions needed to correctly specify parametric binary choice probability models make them particularly vulnerable to misspeci cation. Semiparametric models provide a less restrictive approach with estimators that exhibit desirable asymptotic properties. This paper discusses the standard parametric binary choice models, Probit and Logit, as well as the semiparametric binary choice estimators proposed in Ichimura (1993) and Klein and Spady (1993). A Monte Carlo study suggests that the semiparametric estimators have desirable nite sample properties and outperform their parametric counterparts when the parametric model is misspeci ed. The semiparametric estimators show only moderate e ciency loss compared to correctly speci ed param...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
One of the most cited studies within the field of binary choice models is that of Klein and Spady (1...
We use simple examples to show how the bias and standard error of an estimator depend in part on the...
The following thesis compares the performance of several parametric and semiparametric estimators in...
We propose a nonparametric approach for estimating single-index, binary-choice models when parametri...
Abstract. We discuss the semi-nonparametric approach of Gallant and Nychka (1987, Econometrica 55: 3...
Although semiparametric alternatives are available, parametric binary choice models are widely used ...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
We discuss the semi-nonparametric approach of Gallant and Nychka (1987, Econometrica 55: 363\u201339...
Most existing semi-parametric estimation procedures for binary choice models are based on the maximu...
This Master thesis investigates the semi-parametric estimation method Maximum Score of Manski (1988)...
We discuss the semi-nonparametric approach of Gallant and Nychka (1987, Econometrica 55: 363–390), t...
This paper uses information theoretic methods to introduce a new class of probability distributions...
In this paper we discuss the derivation, and use a Monte Carlo study to examine the finite sample pe...
Abstract In this paper, nonlinear least squares (NLLS) estimators are proposed for semiparametric bi...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
One of the most cited studies within the field of binary choice models is that of Klein and Spady (1...
We use simple examples to show how the bias and standard error of an estimator depend in part on the...
The following thesis compares the performance of several parametric and semiparametric estimators in...
We propose a nonparametric approach for estimating single-index, binary-choice models when parametri...
Abstract. We discuss the semi-nonparametric approach of Gallant and Nychka (1987, Econometrica 55: 3...
Although semiparametric alternatives are available, parametric binary choice models are widely used ...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
We discuss the semi-nonparametric approach of Gallant and Nychka (1987, Econometrica 55: 363\u201339...
Most existing semi-parametric estimation procedures for binary choice models are based on the maximu...
This Master thesis investigates the semi-parametric estimation method Maximum Score of Manski (1988)...
We discuss the semi-nonparametric approach of Gallant and Nychka (1987, Econometrica 55: 363–390), t...
This paper uses information theoretic methods to introduce a new class of probability distributions...
In this paper we discuss the derivation, and use a Monte Carlo study to examine the finite sample pe...
Abstract In this paper, nonlinear least squares (NLLS) estimators are proposed for semiparametric bi...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
One of the most cited studies within the field of binary choice models is that of Klein and Spady (1...
We use simple examples to show how the bias and standard error of an estimator depend in part on the...