Local-Polynomial Estimation for Multivariate Regression Discontinuity Designs
We introduce a multivariate local-linear estimator for multivariate regression discontinuity designs in which treatment is assigned by crossing a boundary in the space of running variables. The dominant approach uses the Euclidean distance from a boundary point as the scalar running variable; hence,...
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Zusammenfassung: | We introduce a multivariate local-linear estimator for multivariate
regression discontinuity designs in which treatment is assigned by crossing a
boundary in the space of running variables. The dominant approach uses the
Euclidean distance from a boundary point as the scalar running variable; hence,
multivariate designs are handled as uni-variate designs. However, the distance
running variable is incompatible with the assumption for asymptotic validity.
We handle multivariate designs as multivariate. In this study, we develop a
novel asymptotic normality for multivariate local-polynomial estimators. Our
estimator is asymptotically valid and can capture heterogeneous treatment
effects over the boundary. We demonstrate the effectiveness of our estimator
through numerical simulations. Our empirical illustration of a Colombian
scholarship study reveals a richer heterogeneity (including its absence) of the
treatment effect that is hidden in the original estimates. |
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DOI: | 10.48550/arxiv.2402.08941 |