This article proposes a fully nonparametric kernel method to account for observed covariates in regression discontinuity designs (RDD), which may increase precision of treatment effect estimation. It is shown that conditioning on covariates reduces the asymptotic variance and allows estimating the treatment effect at the rate of one- dimensional nonparametric regression, irrespective of the dimension of the continuously distributed elements in the conditioning set. Furthermore, the proposed method may decrease bias and restore identification by controlling for discontinuities in the covariate distribution at the discontinuity threshold, provided that all relevant discontinuously distributed variables are controlled for. To illustrate...
This paper proposes a novel approach to incorporate covariates in regression discontinuity (RD) desi...
This paper develops a nonparametric identification analysis in regression discontinuity (RD) designs...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
<p>This article proposes a fully nonparametric kernel method to account for observed covariates in r...
This thesis studies regression discontinuity designs with the use of additional covariates for estim...
This paper studies the case of possibly high-dimensional covariates in the regression discontinuity ...
We study regression discontinuity designs with the use of additional covariates for estimation of th...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Estimation of causal eects in regression discontinuity designs relies on a local Wald estimator whos...
We study regression discontinuity designs in which many predetermined covariates, possibly much more...
The regression-discontinuity design (RD) is a powerful methodological alternative to the quasi-exper...
The Regression Discontinuity (RD) design looks similar to the non-equivalent group design, which use...
We study the behaviour of the Wald estimator of causal effects in regression discontinuity design wh...
In a traditional regression-discontinuity design (RDD), units are assigned to treatment on the basis...
This handbook chapter gives an introduction to the sharp regression discontinuity design, covering i...
This paper proposes a novel approach to incorporate covariates in regression discontinuity (RD) desi...
This paper develops a nonparametric identification analysis in regression discontinuity (RD) designs...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
<p>This article proposes a fully nonparametric kernel method to account for observed covariates in r...
This thesis studies regression discontinuity designs with the use of additional covariates for estim...
This paper studies the case of possibly high-dimensional covariates in the regression discontinuity ...
We study regression discontinuity designs with the use of additional covariates for estimation of th...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Estimation of causal eects in regression discontinuity designs relies on a local Wald estimator whos...
We study regression discontinuity designs in which many predetermined covariates, possibly much more...
The regression-discontinuity design (RD) is a powerful methodological alternative to the quasi-exper...
The Regression Discontinuity (RD) design looks similar to the non-equivalent group design, which use...
We study the behaviour of the Wald estimator of causal effects in regression discontinuity design wh...
In a traditional regression-discontinuity design (RDD), units are assigned to treatment on the basis...
This handbook chapter gives an introduction to the sharp regression discontinuity design, covering i...
This paper proposes a novel approach to incorporate covariates in regression discontinuity (RD) desi...
This paper develops a nonparametric identification analysis in regression discontinuity (RD) designs...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...