A Finite Sample Theorem for Longitudinal Causal Inference with Machine Learning: Long Term, Dynamic, and Mediated Effects
I construct and justify confidence intervals for longitudinal causal parameters estimated with machine learning. Longitudinal parameters include long term, dynamic, and mediated effects. I provide a nonasymptotic theorem for any longitudinal causal parameter estimated with any machine learning algorithm that satisfies a few simple, interpretable conditions. The main result encompasses local parameters defined for specific demographics as well as proximal parameters defined in the presence of unobserved confounding. Formally, I prove consistency, Gaussian approximation, and semiparametric efficiency. The rate of convergence is $n^{-1/2}$ for global parameters, and it degrades gracefully for local parameters. I articulate a simple set of conditions to translate mean square rates into statistical inference. A key feature of the main result is a new multiple robustness to ill posedness for proximal causal inference in longitudinal settings.
Dec-28-2021
- Country:
- North America > United States
- Massachusetts > Middlesex County > Cambridge (0.04)
- Europe
- Czechia > Prague (0.04)
- United Kingdom > England
- Oxfordshire > Oxford (0.04)
- North America > United States
- Genre:
- Research Report > New Finding (0.45)
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- Health & Medicine (1.00)
- Education (1.00)
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