Doubly Robust Inference in Causal Latent Factor Models
About
This article introduces a new estimator of average treatment effects under unobserved confounding in modern data-rich environments featuring large numbers of units and outcomes. The proposed estimator is doubly robust, combining outcome imputation, inverse probability weighting, and a novel cross-fitting procedure for matrix completion. We derive finite-sample and asymptotic guarantees, and show that the error of the new estimator converges to a mean-zero Gaussian distribution at a parametric rate. Simulation results demonstrate the relevance of the formal properties of the estimators analyzed in this article.
Alberto Abadie, Anish Agarwal, Raaz Dwivedi, Abhin Shah• 2024
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Super-resolution | Manga109 | PSNR39.2 | 821 | |
| Image Super-resolution | Set5 | PSNR38.13 | 692 | |
| Image Super-resolution | Set14 | PSNR33.95 | 506 | |
| Image Super-resolution | Urban100 | PSNR32.85 | 406 | |
| Image Super-resolution | BSDS100 | PSNR32.31 | 151 |
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