Showing 1 - 10 of 39
In the practice of program evaluation, choosing the covariates and the functional form of the propensity score is an important choice for estimating treatment effects. This paper proposes data-driven model selection and model averaging procedures that address this issue for the propensity score...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10010209255
This paper analyzes Structural Vector Autoregressions (SVARs) where identification of structural parameters holds locally but not globally. In this case there exists a set of isolated structural parameter points that are observationally equivalent under the imposed restrictions. Although the...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10013394355
This paper analyzes Structural Vector Autoregressions (SVARs) where identification of structural parameters holds locally but not globally. In this case there exists a set of isolated structural parameter points that are observationally equivalent under the imposed restrictions. Although the...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10012621117
We review the literature on robust Bayesian analysis as a tool for global sensitivity analysis and for statistical decision-making under ambiguity. We discuss the methods proposed in the literature, including the different ways of constructing the set of priors that are the key input of the...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10014048660
Persistent link: https://ebvufind01.dmz1.zbw.eu/10010465647
We propose a method for conducting inference on impulse responses in structural vector autoregressions (SVARs) when the impulse response is not point identified because the number of equality restrictions one can credibly impose is not sufficient for point identification and/or one imposes sign...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10010434070
This paper reconciles the asymptotic disagreement between Bayesian and frequentist inference in set-identified models by adopting a multiple-prior (robust) Bayesian approach. We propose new tools for Bayesian inference in set-identified models. We show that these tools have a well-defined...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10011924556
This paper examines the asymptotic behavior of the posterior distribution of a possibly nondifferentiable function g(θ), where θ is a finite-dimensional parameter of either a parametric or semiparametric model. The main assumption is that the distribution of a suitable estimator θ^n, its...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10011992097
In our laboratory experiment, subjects, in sequence, have to predict the value of a good. We elicit the second subject's belief twice: first ("first belief"), after he observes his predecessor's action; second ("posterior" belief.), after he observes his private signal. Our main result is that...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10011871330
This paper examines the asymptotic behavior of the posterior distribution of a possibly nondifferentiable function g(theta), where theta is a finite-dimensional parameter of either a parametric or semiparametric model. The main assumption is that the distribution of a suitable estimator theta_n,...
Persistent link: https://ebvufind01.dmz1.zbw.eu/10011758319