Estimation and Inference in Boundary Discontinuity Designs: Distance-Based Methods
Published: Oct 30, 2025
Last Updated: Oct 30, 2025
Authors:Matias D. Cattaneo, Rocio Titiunik, Ruiqi, Yu
Abstract
We study the statistical properties of nonparametric distance-based (isotropic) local polynomial regression estimators of the boundary average treatment effect curve, a key causal functional parameter capturing heterogeneous treatment effects in boundary discontinuity designs. We present necessary and/or sufficient conditions for identification, estimation, and inference in large samples, both pointwise and uniformly along the boundary. Our theoretical results highlight the crucial role played by the ``regularity'' of the boundary (a one-dimensional manifold) over which identification, estimation, and inference are conducted. Our methods are illustrated with simulated data. Companion general-purpose software is provided.