Non-parametric efficient estimation of marginal structural models with multi-valued time-varying treatments
- URL: http://arxiv.org/abs/2409.18782v1
- Date: Fri, 27 Sep 2024 14:29:12 GMT
- Title: Non-parametric efficient estimation of marginal structural models with multi-valued time-varying treatments
- Authors: Axel Martin, Michele Santacatterina, Iván Díaz,
- Abstract summary: We use machine learning together with recent developments in semi-parametric efficiency theory for longitudinal studies to propose such an estimator.
We show conditions under which the proposed estimator is efficient as anally normal, and sequentially doubly robust in the sense that it is consistent if, for each time point, either the outcome or the treatment mechanism is consistently estimated.
- Score: 0.9558392439655012
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Marginal structural models are a popular method for estimating causal effects in the presence of time-varying exposures. In spite of their popularity, no scalable non-parametric estimator exist for marginal structural models with multi-valued and time-varying treatments. In this paper, we use machine learning together with recent developments in semiparametric efficiency theory for longitudinal studies to propose such an estimator. The proposed estimator is based on a study of the non-parametric identifying functional, including first order von-Mises expansions as well as the efficient influence function and the efficiency bound. We show conditions under which the proposed estimator is efficient, asymptotically normal, and sequentially doubly robust in the sense that it is consistent if, for each time point, either the outcome or the treatment mechanism is consistently estimated. We perform a simulation study to illustrate the properties of the estimators, and present the results of our motivating study on a COVID-19 dataset studying the impact of mobility on the cumulative number of observed cases.
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