Many empirical examples of regression discontinuity (RD) designs concern a continuous treatment variable, but the theoretical aspects of such models are less studied. This study examines the identification and estimation of the structural function in fuzzy RD designs with a continuous treatment variable. The structural function fully describes the causal impact of the treatment on the outcome. We show that the nonlinear and nonseparable structural function can be nonparametrically identified at the RD cutoff under shape restrictions, including monotonicity and smoothness conditions. Based on the nonparametric identification equation, we propose a three-step semiparametric estimation procedure and establish the asymptotic normality of the es...
Regression Discontinuity Design (RDD) is one of the most popular designs in the field of causal infe...
Fuzzy regression discontinuity (FRD) designs are used frequently in many areas of applied economics....
<p>This article proposes a fully nonparametric kernel method to account for observed covariates in r...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Many empirical studies use Fuzzy Regression Discontinuity (FRD) designs to identify treatment effect...
We develop an analysis of sharp and fuzzy RD designs, based on a new approach for non-parametrically...
In regression discontinuity models, where the probability of treatment jumps discretely when a runni...
Numerous empirical studies employ regression discontinuity designs with multiple cutoffs and heterog...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
Whenever treatment effects are heterogeneous, and there is sorting into treatment based on the gain,...
We propose new confidence sets (CSs) for the regression discontinuity parameter in fuzzy designs. Ou...
In the regression-discontinuity (RD) design, units are assigned to treatment based on whether their ...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
Regression discontinuity models, where the probability of treatment jumps discretely when a running ...
Regression Discontinuity Design (RDD) is one of the most popular designs in the field of causal infe...
Fuzzy regression discontinuity (FRD) designs are used frequently in many areas of applied economics....
<p>This article proposes a fully nonparametric kernel method to account for observed covariates in r...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Many empirical studies use Fuzzy Regression Discontinuity (FRD) designs to identify treatment effect...
We develop an analysis of sharp and fuzzy RD designs, based on a new approach for non-parametrically...
In regression discontinuity models, where the probability of treatment jumps discretely when a runni...
Numerous empirical studies employ regression discontinuity designs with multiple cutoffs and heterog...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
Whenever treatment effects are heterogeneous, and there is sorting into treatment based on the gain,...
We propose new confidence sets (CSs) for the regression discontinuity parameter in fuzzy designs. Ou...
In the regression-discontinuity (RD) design, units are assigned to treatment based on whether their ...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
Regression discontinuity models, where the probability of treatment jumps discretely when a running ...
Regression Discontinuity Design (RDD) is one of the most popular designs in the field of causal infe...
Fuzzy regression discontinuity (FRD) designs are used frequently in many areas of applied economics....
<p>This article proposes a fully nonparametric kernel method to account for observed covariates in r...