Title | Moderately-Balanced Representation Learning for Treatment Effects with Orthogonality Information |
Creator | |
Date Issued | 2022 |
Conference Name | 19th Pacific Rim International Conference on Artificial Intelligence (PRICAI) |
Source Publication | PRICAI 2022: Trends in Artificial Intelligence: 19th Pacific Rim International Conference on Artificial Intelligence, PRICAI 2022, Shanghai, China, November 10–13, 2022, Proceedings, Part II
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Editor | Sankalp Khanna, Jian Cao, Quan Bai, Guandong Xu |
ISBN | 978-3-031-20864-5 |
ISSN | 0302-9743 |
Volume | Lecture Notes in Computer Science (LNCS,volume 13630) |
Pages | 3-16 |
Conference Date | November 10–13, 2022 |
Conference Place | Shanghai, China |
Publication Place | Cham |
Publisher | Springer |
Abstract | Estimating the average treatment effect (ATE) from observational data is challenging due to selection bias. Existing works mainly tackle this challenge in two ways. Some researchers propose constructing a score function that satisfies the orthogonal condition, which guarantees that the established ATE estimator is “orthogonal" to be more robust. The others explore representation learning models to achieve a balanced representation between the treated and the controlled groups. However, existing studies fail to 1) discriminate treated units from controlled ones in the representation space to avoid the over-balanced issue; 2) fully utilize the “orthogonality information". In this paper, we propose a moderately-balanced representation learning (MBRL) framework based on recent covariates balanced representation learning methods and orthogonal machine learning theory. This framework protects the representation from being over-balanced via multi-task learning. Simultaneously, MBRL incorporates the noise orthogonality information in the training and validation stages to achieve a better ATE estimation. The comprehensive experiments on benchmark and simulated datasets show the superiority and robustness of our method on treatment effect estimations compared with existing state-of-the-art methods. |
Keyword | Causal inference Representation learning Treatment effects |
DOI | 10.1007/978-3-031-20865-2_1 |
URL | View source |
Indexed By | CPCI-S |
Language | 英语English |
WOS Research Area | Computer Science |
WOS Subject | Computer Science, Artificial Intelligence ; Computer Science, Interdisciplinary Applications ; Computer Science, Theory & Methods |
WOS ID | WOS:000899329500001 |
Scopus ID | 2-s2.0-85142893826 |
Citation statistics | |
Document Type | Conference paper |
Identifier | http://repository.uic.edu.cn/handle/39GCC9TT/11666 |
Collection | Faculty of Science and Technology |
Corresponding Author | Wu, Qi |
Affiliation | 1.School of Data Science,City University of Hong Kong,Hong Kong 2.Guangdong Provincial Key Laboratory of Interdisciplinary Research and Application for Data Science,BNU-HKBU United International College,Zhuhai,China 3.JD Digits,Beijing,China |
Recommended Citation GB/T 7714 | Huang, Yiyan,Leung, Cheuk Hang,Ma, Shuminet al. Moderately-Balanced Representation Learning for Treatment Effects with Orthogonality Information[C]//Sankalp Khanna, Jian Cao, Quan Bai, Guandong Xu. Cham: Springer, 2022: 3-16. |
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