This paper considers random coefficients binary choice models. The main goal is to estimate the density of the random coefficients nonparametrically. This is an ill-posed inverse prob- lem characterized by an integral transform. A new density estimator for the random coefficients is developed, utilizing Fourier-Laplace series on spheres. This approach offers a clear insight on the identification problem. More importantly, it leads to a closed form estimator formula that yields a simple plug-in procedure requiring no numerical optimization. The new estimator, therefore, is easy to implement in empirical applications, while being flexible about the treatment of unobserved hetero- geneity. Extensions including treatments of non-random coeffici...
In this paper we give simple proofs of identification results in discrete choice models for the case...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
This paper considers random coefficients binary choice models. The main goal is to estimate the dens...
This paper considers random coefficients binary choice models. The main goal is to estimate the dens...
Multinomial choice and other nonlinear models are often used to estimate demand. We show how to nonp...
Individual players in a simultaneous equation binary choice model act differently in different envir...
This paper studies point identification of the distribution of the coefficients in some random coeff...
This paper studies point identification of the distribution of the coefficients in some random coeff...
In structural economic models, individuals are usually characterized as solving a de-cision problem ...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
This paper studies binary response static games of complete information allowing complex heterogenei...
This paper studies the problem of nonparametric identification and estimation of binary threshold-cro...
The random coefficients multinomial choice logit model, also known as the mixed logit, has been wide...
In this paper we consider endogenous regressors in the binary choice model under a weak median exclu...
In this paper we give simple proofs of identification results in discrete choice models for the case...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
This paper considers random coefficients binary choice models. The main goal is to estimate the dens...
This paper considers random coefficients binary choice models. The main goal is to estimate the dens...
Multinomial choice and other nonlinear models are often used to estimate demand. We show how to nonp...
Individual players in a simultaneous equation binary choice model act differently in different envir...
This paper studies point identification of the distribution of the coefficients in some random coeff...
This paper studies point identification of the distribution of the coefficients in some random coeff...
In structural economic models, individuals are usually characterized as solving a de-cision problem ...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
This paper studies binary response static games of complete information allowing complex heterogenei...
This paper studies the problem of nonparametric identification and estimation of binary threshold-cro...
The random coefficients multinomial choice logit model, also known as the mixed logit, has been wide...
In this paper we consider endogenous regressors in the binary choice model under a weak median exclu...
In this paper we give simple proofs of identification results in discrete choice models for the case...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...