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Information-Theoretic Algorithms and Identifiability for Causal Graph Discovery

Author(s)
Compton, Spencer
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Advisor
Uhler, Caroline
Greenewald, Kristjan
Terms of use
In Copyright - Educational Use Permitted Copyright MIT http://rightsstatements.org/page/InC-EDU/1.0/
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Abstract
It is a task of widespread interest to learn the underlying causal structure for systems of random variables. Entropic Causal Inference is a recent framework for learning the causal graph between two variables from observational data (i.e., without experiments) by finding the information-theoretically simplest structural explanation of the data. In this thesis, we develop theoretical techniques that enable us to show how Entropic Causal Inference permits learnability of causal graphs with particular information-theoretically simple structure. We show the first theoretical guarantee for finite-sample learnability with Entropic Causal Inference for pairs of random variables. Later, we extend this guarantee to show the first result for Entropic Causal Inference in systems with more than two variables: proving learnability of general directed acyclic graphs over many variables (under assumptions on the generative process). We implement and experimentally evaluate Entropic Causal Inference on synthetic and real-world causal systems. Moreover, we improve the best-known approximation guarantee for the Minimum Entropy Coupling problem. This information-theoretic algorithmic problem has direct relevance to Entropic Causal Inference and is also of independent interest. In totality, this thesis develops algorithmic and information-theoretic tools that shed light on how information-theoretic properties enable learning of causal graphs from both a practical and theoretical perspective.
Date issued
2022-05
URI
https://hdl.handle.net/1721.1/145148
Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science
Publisher
Massachusetts Institute of Technology

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