EMLGMLJun 13, 2020

Synthetic Interventions

arXiv:2006.07691v757 citations
Originality Incremental advance
AI Analysis

This work addresses a key limitation in policy evaluation for researchers and practitioners by enabling analysis of multiple treatments, though it is incremental as it builds directly on existing synthetic controls frameworks.

The paper tackles the problem of extending the synthetic controls methodology to multiple treatments by proposing synthetic interventions (SI), which uses a low-rank tensor factor model and generalizes SC-based estimators, achieving consistency and asymptotic normality under certain conditions.

The synthetic controls (SC) methodology is a prominent tool for policy evaluation in panel data applications. Researchers commonly justify the SC framework with a low-rank matrix factor model that assumes the potential outcomes are described by low-dimensional unit and time specific latent factors. In the recent work of [Abadie '20], one of the pioneering authors of the SC method posed the question of how the SC framework can be extended to multiple treatments. This article offers one resolution to this open question that we call synthetic interventions (SI). Fundamental to the SI framework is a low-rank tensor factor model, which extends the matrix factor model by including a latent factorization over treatments. Under this model, we propose a generalization of the standard SC-based estimators. We prove the consistency for one instantiation of our approach and provide conditions under which it is asymptotically normal. Moreover, we conduct a representative simulation to study its prediction performance and revisit the canonical SC case study of [Abadie-Diamond-Hainmueller '10] on the impact of anti-tobacco legislations by exploring related questions not previously investigated.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes