Sample-Specific Root Causal Inference with Latent VariablesDownload PDF

Published: 17 Mar 2023, Last Modified: 22 Oct 2023CLeaR 2023 PosterReaders: Everyone
Keywords: causal inference, root cause, confounding, LiNGAM
TL;DR: We design an algorithm for identifying sample-specific root causes of disease even when confounding exists.
Abstract: Root causal analysis seeks to identify the set of initial perturbations that induce an unwanted outcome. In prior work, we defined sample-specific root causes of disease using exogenous error terms that predict a diagnosis in a structural equation model. We rigorously quantified predictivity using Shapley values. However, the associated algorithms for inferring root causes assume no latent confounding. We relax this assumption by permitting confounding among the predictors. We then introduce a corresponding procedure called Extract Errors with Latents (EEL) for recovering the error terms up to contamination by other error terms lying on certain paths under the linear non-Gaussian acyclic model. EEL also identifies the smallest sets of dependent errors for fast computation of the Shapley values. The algorithm bypasses the hard problem of estimating the underlying causal graph in both cases. Experiments highlight the superior accuracy and robustness of EEL relative to its predecessors.
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