Contrasting Identifying Assumptions of Average Causal Effects : Robustness and Semiparametric Efficiency

Abstract
Semiparametric inference on average causal effects from observational data is based on assumptions yielding identification of the effects. In practice, several distinct identifying assumptions may be plausible; an analyst has to make a delicate choice between these models. In this paper, we study three identifying assumptions based on the potential outcome framework: the back-door assumption, which uses pre-treatment covariates, the front-door assumption, which uses mediators, and the two-door assumption using pre-treatment covariates and mediators simultaneously. We provide the efficient influence functions and the corresponding semiparametric efficiency bounds that hold under these assumptions, and their combinations. We demonstrate that neither of the identification models provides uniformly the most efficient estimation and give conditions under which some bounds are lower than others. We show when semiparametric estimating equation estimators based on influence functions attain the bounds, and study the robustness of the estimators to misspecification of the nuisance models. The theory is complemented with simulation experiments on the finite sample behavior of the estimators. The results obtained are relevant for an analyst facing a choice between several plausible identifying assumptions and corresponding estimators. Our results show that this choice implies a trade-off between efficiency and robustness to misspecification of the nuisance models.
Main Authors
Format
Articles Research article
Published
2023
Series
Subjects
Publication in research information system
Publisher
JMLR
Original source
https://jmlr.org/papers/v24/21-1392.html
The permanent address of the publication
https://urn.fi/URN:NBN:fi:jyu-202309195189Use this for linking
Review status
Peer reviewed
ISSN
1532-4435
Language
English
Published in
Journal of Machine Learning Research
Citation
  • Gorbach, T., de Luna, X., Karvanen, J., & Waernbaum, I. (2023). Contrasting Identifying Assumptions of Average Causal Effects : Robustness and Semiparametric Efficiency. Journal of Machine Learning Research, 24, Article 197. https://jmlr.org/papers/v24/21-1392.html
License
CC BY 4.0Open Access
Funder(s)
Research Council of Finland
Funding program(s)
Research profiles, AoF
Profilointi, SA
Research Council of Finland
Additional information about funding
This work was supported by the Marianne and Marcus Wallenberg Foundation (grant 2015.0060), FORTE (grant 2018-00852), the Swedish Research Council (grants 2018-02670 and 2016-00703) and the Academy of Finland (grant number 311877). This research was conducted using the resources of High Performance Computing Center North (HPC2N).
Copyright© 2023 Tetiana Gorbach, Xavier de Luna, Juha Karvanen, Ingeborg Waernbaum

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