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Estimating Potential Outcome Distributions with Collaborating Causal Networks.

Publication ,  Journal Article
Zhou, T; Carson, WE; Carlson, D
Published in: Transactions on machine learning research
September 2022

Traditional causal inference approaches leverage observational study data to estimate the difference in observed (factual) and unobserved (counterfactual) outcomes for a potential treatment, known as the Conditional Average Treatment Effect (CATE). However, CATE corresponds to the comparison on the first moment alone, and as such may be insufficient in reflecting the full picture of treatment effects. As an alternative, estimating the full potential outcome distributions could provide greater insights. However, existing methods for estimating treatment effect potential outcome distributions often impose restrictive or overly-simplistic assumptions about these distributions. Here, we propose Collaborating Causal Networks (CCN), a novel methodology which goes beyond the estimation of CATE alone by learning the full potential outcome distributions. Estimation of outcome distributions via the CCN framework does not require restrictive assumptions of the underlying data generating process (e.g. Gaussian errors). Additionally, our proposed method facilitates estimation of the utility of each possible treatment and permits individual-specific variation through utility functions (e.g. risk tolerance variability). CCN not only extends outcome estimation beyond traditional risk difference, but also enables a more comprehensive decision making process through definition of flexible comparisons. Under assumptions commonly made in the causal inference literature, we show that CCN learns distributions that asymptotically capture the correct potential outcome distributions. Furthermore, we propose an adjustment approach that is empirically effective in alleviating sample imbalance between treatment groups in observational studies. Finally, we evaluate the performance of CCN in multiple experiments on both synthetic and semi-synthetic data. We demonstrate that CCN learns improved distribution estimates compared to existing Bayesian and deep generative methods as well as improved decisions with respects to a variety of utility functions.

Duke Scholars

Published In

Transactions on machine learning research

DOI

EISSN

2835-8856

ISSN

2835-8856

Publication Date

September 2022

Volume

2022

Start / End Page

https / //openreview.net/pdf?id=q1Fey9feu7
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Zhou, T., Carson, W. E., & Carlson, D. (2022). Estimating Potential Outcome Distributions with Collaborating Causal Networks. Transactions on Machine Learning Research, 2022, https-//openreview.net/pdf?id=q1Fey9feu7. https://doi.org/10.48550/arxiv.2110.01664
Zhou, Tianhui, William E. Carson, and David Carlson. “Estimating Potential Outcome Distributions with Collaborating Causal Networks.Transactions on Machine Learning Research 2022 (September 2022): https-//openreview.net/pdf?id=q1Fey9feu7. https://doi.org/10.48550/arxiv.2110.01664.
Zhou T, Carson WE, Carlson D. Estimating Potential Outcome Distributions with Collaborating Causal Networks. Transactions on machine learning research. 2022 Sep;2022:https-//openreview.net/pdf?id=q1Fey9feu7.
Zhou, Tianhui, et al. “Estimating Potential Outcome Distributions with Collaborating Causal Networks.Transactions on Machine Learning Research, vol. 2022, Sept. 2022, p. https-//openreview.net/pdf?id=q1Fey9feu7. Epmc, doi:10.48550/arxiv.2110.01664.
Zhou T, Carson WE, Carlson D. Estimating Potential Outcome Distributions with Collaborating Causal Networks. Transactions on machine learning research. 2022 Sep;2022:https-//openreview.net/pdf?id=q1Fey9feu7.

Published In

Transactions on machine learning research

DOI

EISSN

2835-8856

ISSN

2835-8856

Publication Date

September 2022

Volume

2022

Start / End Page

https / //openreview.net/pdf?id=q1Fey9feu7