Synthetic Blips: Generalizing Synthetic Controls for Dynamic Treatment Effects
Anish Agarwal, Sukjin Han, Dwaipayan Saha, Vasilis Syrgkanis, Haeyeon Yoon

TL;DR
This paper introduces a novel method called synthetic blip effects for estimating dynamic, unit-specific treatment effects in panel data with sequential treatments, leveraging low-rank latent factor models for broader applicability.
Contribution
It generalizes synthetic control methods to dynamic treatment effects with a low-rank latent factor approach, enabling flexible, scalable estimation in observational settings.
Findings
Demonstrated effectiveness on Korean firm-level data
Enabled estimation of individualized dynamic treatment effects
Provided practical algorithms for implementation
Abstract
We propose a generalization of the synthetic control and interventions methods to the setting with dynamic treatment effects. We consider the estimation of unit-specific treatment effects from panel data collected under a general treatment sequence. Here, each unit receives multiple treatments sequentially, according to an adaptive policy that depends on a latent, endogenously time-varying confounding state. Under a low-rank latent factor model assumption, we develop an identification strategy for any unit-specific mean outcome under any sequence of interventions. The latent factor model we propose admits linear time-varying and time-invariant dynamical systems as special cases. Our approach can be viewed as an identification strategy for structural nested mean models -- a widely used framework for dynamic treatment effects -- under a low-rank latent factor assumption on the blip…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Health Systems, Economic Evaluations, Quality of Life · Innovation Policy and R&D
MethodsBLIP: Bootstrapping Language-Image Pre-training
