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Improving Observational Causality Using Machine Learning / Tong Liu.

Dissertations & Theses @ University of Pennsylvania Available online

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Format:
Book
Thesis/Dissertation
Author/Creator:
Liu, Tong, author.
Contributor:
University of Pennsylvania. Computer and Information Science, degree granting institution.
Language:
English
Subjects (All):
Computer science.
Public health.
Statistics.
Information science.
Computer and Information Science--Penn dissertations.
Penn dissertations--Computer and Information Science.
Local Subjects:
Computer science.
Public health.
Statistics.
Information science.
Computer and Information Science--Penn dissertations.
Penn dissertations--Computer and Information Science.
Physical Description:
1 online resource (174 pages)
Contained In:
Dissertations Abstracts International 85-12A.
Place of Publication:
[Philadelphia, Pennsylvania] : University of Pennsylvania, 2022.
Ann Arbor : ProQuest Dissertations & Theses, 2024
Language Note:
English
Summary:
Causality is at the heart of many machine learning questions whether we know it or not, and we need to explicitly incorporate causal reasoning in order to answer them effectively. By a similar token, traditional causal inference methods can benefit from machine learning to adapt to more complex data domains. This thesis will explore the interplay between observational causal inference and machine learning, focusing on improving different aspects of the causal inference study lifecycle. Namely, we develop methods that facilitate the discovery of new study opportunities, improve the feasibility of existing studies, and allow for better interpretation of the resulting causal estimates. As identifying causal inference opportunities is currently a manual process requiring human intuition, we first develop a scaleable method for data-driven discovery of regression discontinuities, a class of observational causal inference methods. Next, we re-frame observational study exclusion criteria as a well-posed machine learning task, increasing interpretability by characterizing the excluded units. Both our discovery and exclusion criteria methods explicitly account for maximizing statistical power to increase study feasibility, and both are evaluated for their real-world efficacy on a medical claims dataset with over 60 million patients. Finally, we show the utility of incorporating machine learning into the causal study lifecycle through a large-scale study of the impact of civility in online social interactions. Through these works, we highlight not only how machine learning can improve causal inference in observational data settings but also the need to consider causality across traditional machine learning tasks.
Notes:
Source: Dissertations Abstracts International, Volume: 85-12, Section: A.
Advisors: Ungar, Lyle H.; Kording, Konrad P.; Committee members: Bastani, Osbert; Bastani, Hamsa S.; Johnson, Kevin B.; McGuire, Morgan.
Department: Computer and Information Science.
Ph.D. University of Pennsylvania 2024.
Local Notes:
School code: 0175
ISBN:
9798382830018
Access Restriction:
Restricted for use by site license.

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