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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 MM^* be a low rank matrix and EE be a zero-mean noise matrix. For a `treatment' matrix ZZ with entries in {0,1}\{0,1\} we observe the matrix OO with entries Oij:=Mij+Eij+TijZijO_{ij} := M^*_{ij} + E_{ij} + \mathcal{T}_{ij} Z_{ij} where Tij\mathcal{T}_{ij} are unknown, heterogenous treatment effects. The problem requires we estimate the average treatment effect τ:=ijTijZij/ijZij\tau^* := \sum_{ij} \mathcal{T}_{ij} Z_{ij} / \sum_{ij} Z_{ij}. The synthetic control paradigm provides an approach to estimating τ\tau^* when ZZ places support on a single row. This paper extends that framework to allow rate-optimal recovery of τ\tau^* for general ZZ, 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.

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