Deep Learning of Potential Outcomes

Koch, Bernard, Sainburg, Tim, Geraldo, Pablo, Jiang, Song, Sun, Yizhou, Foster, Jacob Gates

arXiv.org Machine Learning 

It provides an intuitive introduction on how deep learning can be used to estimate/predict heterogeneous treatment effects and extend causal inference to settings where confounding is non-linear, time varying, or encoded in text, networks, and images. To maximize accessibility, we also introduce prerequisite concepts from causal inference and deep learning.