Feb. 1, 2024, 12:41 p.m. | Katherine A. Keith Sergey Feldman David Jurgens Jonathan Bragg Rohit Bhattacharya

cs.CL updates on arXiv.org arxiv.org

Confounding is a significant obstacle to unbiased estimation of causal effects from observational data. For settings with high-dimensional covariates -- such as text data, genomics, or the behavioral social sciences -- researchers have proposed methods to adjust for confounding by adapting machine learning methods to the goal of causal estimation. However, empirical evaluation of these adjustment methods has been challenging and limited. In this work, we build on a promising empirical evaluation strategy that simplifies evaluation design and uses real …

cs.ai cs.cl cs.lg data effects evaluation genomics machine machine learning researchers sampling social social sciences stat.me text unbiased

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