We extend the continuity-based framework to Regression Discontinuity Designs (RDDs) to identify and estimate causal effects in the presence of interference when units are connected through a network. In this setting, assignment to an "effective treatment," which comprises the individual treatment and a summary of the treatment of interfering units (e.g., friends, classmates), is determined by the unit's score and the scores of other interfering units, leading to a multiscore RDD with potentially complex, multidimensional boundaries. We characterize these boundaries and derive generalized continuity assumptions to identify the proposed causal estimands, i.e., point and boundary causal effects. Additionally, we develop a distance-based nonparametric estimator, derive its asymptotic properties under restrictions on the network degree distribution, and introduce a novel variance estimator that accounts for network correlation. Finally, we apply our methodology to the PROGRESA/Oportunidades dataset to estimate the direct and indirect effects of receiving cash transfers on children's school attendance.

DAL TORRIONE, E., Arduini, T., Forastiere, L. (2024). Regression Discontinuity Designs Under Interference [Working paper].

Regression Discontinuity Designs Under Interference

Elena Dal Torrione
;
Tiziano Arduini;
2024-11-20

Abstract

We extend the continuity-based framework to Regression Discontinuity Designs (RDDs) to identify and estimate causal effects in the presence of interference when units are connected through a network. In this setting, assignment to an "effective treatment," which comprises the individual treatment and a summary of the treatment of interfering units (e.g., friends, classmates), is determined by the unit's score and the scores of other interfering units, leading to a multiscore RDD with potentially complex, multidimensional boundaries. We characterize these boundaries and derive generalized continuity assumptions to identify the proposed causal estimands, i.e., point and boundary causal effects. Additionally, we develop a distance-based nonparametric estimator, derive its asymptotic properties under restrictions on the network degree distribution, and introduce a novel variance estimator that accounts for network correlation. Finally, we apply our methodology to the PROGRESA/Oportunidades dataset to estimate the direct and indirect effects of receiving cash transfers on children's school attendance.
Working paper
20-nov-2024
Rilevanza internazionale
Settore ECON-05/A - Econometria
English
DAL TORRIONE, E., Arduini, T., Forastiere, L. (2024). Regression Discontinuity Designs Under Interference [Working paper].
DAL TORRIONE, E; Arduini, T; Forastiere, L
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/399943
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