This paper studies the identification and estimation of a nonparametric nonseparable dyadic model where the structural function and the distribution of the unobservable random terms are assumed to be unknown. The identification and the estimation of the distribution of the unobservable random term are also proposed. I assume that the structural function is continuous and strictly increasing in the unobservable heterogeneity. I propose suitable normalization for the identification by allowing the structural function to have some desirable properties such as homogeneity of degree one in the unobservable random term and some of its observables. The consistency and the asymptotic distribution of the estimators are proposed. The finite sample pr...
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...
We consider point estimation and inference based on modifications of the profile likelihood in model...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
We present estimators for nonparametric functions that are nonadditive in unobservable random terms....
We present estimators for nonparametric functions that depend on unobservable random vari-ables in n...
In structural economic models, individuals are usually characterized as solving a de-cision problem ...
One of the most important empirical findings in microeconometrics is the pervasiveness of heterogene...
One of the most important empirical findings in microeconometrics is the pervasiveness of heterogene...
One of the most important empirical findings in microeconometrics is the pervasiveness of heterogene...
Dyadic data is often encountered when quantities of interest are associated with the edges of a netw...
When one wants to estimate a model without specifying the functions and distributions parametrically...
Even though dyadic regressions are widely used in empirical applications, the (asymptotic) propertie...
We consider point estimation and inference based on modifications of the profile likelihood in model...
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...
We consider point estimation and inference based on modifications of the profile likelihood in model...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
We present estimators for nonparametric functions that are nonadditive in unobservable random terms....
We present estimators for nonparametric functions that depend on unobservable random vari-ables in n...
In structural economic models, individuals are usually characterized as solving a de-cision problem ...
One of the most important empirical findings in microeconometrics is the pervasiveness of heterogene...
One of the most important empirical findings in microeconometrics is the pervasiveness of heterogene...
One of the most important empirical findings in microeconometrics is the pervasiveness of heterogene...
Dyadic data is often encountered when quantities of interest are associated with the edges of a netw...
When one wants to estimate a model without specifying the functions and distributions parametrically...
Even though dyadic regressions are widely used in empirical applications, the (asymptotic) propertie...
We consider point estimation and inference based on modifications of the profile likelihood in model...
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...
We consider point estimation and inference based on modifications of the profile likelihood in model...