Invariant Representation Learning for Treatment Effect Estimation
November 24, 2020 ยท Declared Dead ยท ๐ Conference on Uncertainty in Artificial Intelligence
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Authors
Claudia Shi, Victor Veitch, David Blei
arXiv ID
2011.12379
Category
cs.LG: Machine Learning
Cross-listed
stat.ML
Citations
36
Venue
Conference on Uncertainty in Artificial Intelligence
Last Checked
3 months ago
Abstract
The defining challenge for causal inference from observational data is the presence of `confounders', covariates that affect both treatment assignment and the outcome. To address this challenge, practitioners collect and adjust for the covariates, hoping that they adequately correct for confounding. However, including every observed covariate in the adjustment runs the risk of including `bad controls', variables that induce bias when they are conditioned on. The problem is that we do not always know which variables in the covariate set are safe to adjust for and which are not. To address this problem, we develop Nearly Invariant Causal Estimation (NICE). NICE uses invariant risk minimization (IRM) [Arj19] to learn a representation of the covariates that, under some assumptions, strips out bad controls but preserves sufficient information to adjust for confounding. Adjusting for the learned representation, rather than the covariates themselves, avoids the induced bias and provides valid causal inferences. We evaluate NICE on both synthetic and semi-synthetic data. When the covariates contain unknown collider variables and other bad controls, NICE performs better than adjusting for all the covariates.
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