Learning Treatment Effects in Panels with General Intervention Patterns
Abstract
The problem of causal inference with panel data is a central econometric question. The following is a fundamental version of this problem: Let $M^*$ be a low rank matrix and $E$ be a zero-mean noise matrix. For a `treatment' matrix $Z$ with entries in $\{0,1\}$ we observe the matrix $O$ with entries $O_{ij} := M^*_{ij} + E_{ij} + \mathcal{T}_{ij} Z_{ij}$ where $\mathcal{T}_{ij} $ are unknown, heterogenous treatment effects. The problem requires we estimate the average treatment effect $\tau^* := \sum_{ij} \mathcal{T}_{ij} Z_{ij} / \sum_{ij} Z_{ij}$. The synthetic control paradigm provides an approach to estimating $\tau^*$ when $Z$ places support on a single row. This paper extends that framework to allow rate-optimal recovery of $\tau^*$ for general $Z$, thus broadly expanding its applicability. Our guarantees are the first of their type in this general setting. Computational experiments on synthetic and real-world data show a substantial advantage over competing estimators.
Cite
Text
Farias et al. "Learning Treatment Effects in Panels with General Intervention Patterns." Neural Information Processing Systems, 2021.Markdown
[Farias et al. "Learning Treatment Effects in Panels with General Intervention Patterns." Neural Information Processing Systems, 2021.](https://mlanthology.org/neurips/2021/farias2021neurips-learning/)BibTeX
@inproceedings{farias2021neurips-learning,
title = {{Learning Treatment Effects in Panels with General Intervention Patterns}},
author = {Farias, Vivek and Li, Andrew and Peng, Tianyi},
booktitle = {Neural Information Processing Systems},
year = {2021},
url = {https://mlanthology.org/neurips/2021/farias2021neurips-learning/}
}