The recent literature on instrumental variables (IV) features models in which agents sort into treatment status on the basis of gains from treatment as well as on baseline-pretreatment levels. Components of the gains known to the agents and acted on by them may not be known by the observing economist. Such models are called correlated random coefficient models. Sorting on unobserved components of gains complicates the interpretation of what IV estimates. This paper examines testable implications of the hypothesis that agents do not sort into treatment based on gains. In it, we develop new tests to gauge the empirical relevance of the correlated random coefficient model to examine whether the additional complications associated with it are r...
We study low dimensional complier parameters that are identified using a binary instrumental variabl...
Many empirical microeconomic studies estimate econometric models that assume a single finite-valued ...
In this paper, I consider identification of treatment effects whenthe treatment is endogenous. The u...
The recent literature on instrumental variables (IV) features models in which agents sort into treat...
This paper examines the correlated random coecient model. It extends the analysis of Swamy (1971, 19...
In this note we derive the bias of the OLS estimator for a correlated random coefficient model with ...
We estimate a finite mixture dynamic programming model of schooling decisions in which the log wage ...
In this paper we study a random coefficient model for a binary outcome. We allow for the possibility...
Econometric analyses of treatment response commonly use instrumental variable (IV) assumptions to id...
This paper has two main contributions. Firstly, we introduce a new approach, the latent instrumental...
We propose and implement an estimator for identifiable features of correlated random coefficient mod...
This paper uses factor models to identify and estimate distributions of counterfactuals. We extend L...
I develop a new identification strategy for treatment effects when noisy measurements of unobserved ...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
The random coefficients model is an extension of the linear regression model that allows for unobserve...
We study low dimensional complier parameters that are identified using a binary instrumental variabl...
Many empirical microeconomic studies estimate econometric models that assume a single finite-valued ...
In this paper, I consider identification of treatment effects whenthe treatment is endogenous. The u...
The recent literature on instrumental variables (IV) features models in which agents sort into treat...
This paper examines the correlated random coecient model. It extends the analysis of Swamy (1971, 19...
In this note we derive the bias of the OLS estimator for a correlated random coefficient model with ...
We estimate a finite mixture dynamic programming model of schooling decisions in which the log wage ...
In this paper we study a random coefficient model for a binary outcome. We allow for the possibility...
Econometric analyses of treatment response commonly use instrumental variable (IV) assumptions to id...
This paper has two main contributions. Firstly, we introduce a new approach, the latent instrumental...
We propose and implement an estimator for identifiable features of correlated random coefficient mod...
This paper uses factor models to identify and estimate distributions of counterfactuals. We extend L...
I develop a new identification strategy for treatment effects when noisy measurements of unobserved ...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
The random coefficients model is an extension of the linear regression model that allows for unobserve...
We study low dimensional complier parameters that are identified using a binary instrumental variabl...
Many empirical microeconomic studies estimate econometric models that assume a single finite-valued ...
In this paper, I consider identification of treatment effects whenthe treatment is endogenous. The u...