MLLGMEMay 30, 2019

Multiple Causes: A Causal Graphical View

arXiv:1905.12793v19 citations
Originality Synthesis-oriented
AI Analysis

This work provides theoretical justification for an existing method in causal inference, expanding its scope but is incremental in nature.

The paper tackles the problem of unobserved confounding in causal inference from observational data by analyzing the deconfounder algorithm from a causal graphical perspective, showing that it makes valid inferences of intervention distributions and extending its applicability to more complex graphs.

Unobserved confounding is a major hurdle for causal inference from observational data. Confounders---the variables that affect both the causes and the outcome---induce spurious non-causal correlations between the two. Wang & Blei (2018) lower this hurdle with "the blessings of multiple causes," where the correlation structure of multiple causes provides indirect evidence for unobserved confounding. They leverage these blessings with an algorithm, called the deconfounder, that uses probabilistic factor models to correct for the confounders. In this paper, we take a causal graphical view of the deconfounder. In a graph that encodes shared confounding, we show how the multiplicity of causes can help identify intervention distributions. We then justify the deconfounder, showing that it makes valid inferences of the intervention. Finally, we expand the class of graphs, and its theory, to those that include other confounders and selection variables. Our results expand the theory in Wang & Blei (2018), justify the deconfounder for causal graphs, and extend the settings where it can be used.

Foundations

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