A Semiparametric Approach to Causal Inference
In causal inference, an important problem is to quantify the effects of interventions or treatments. Many studies focus on estimating the mean causal effects; however, these estimands may offer limited insight since two distributions can share the same mean yet exhibit significant differences. Exami...
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Zusammenfassung: | In causal inference, an important problem is to quantify the effects of
interventions or treatments. Many studies focus on estimating the mean causal
effects; however, these estimands may offer limited insight since two
distributions can share the same mean yet exhibit significant differences.
Examining the causal effects from a distributional perspective provides a more
thorough understanding. In this paper, we employ a semiparametric density ratio
model (DRM) to characterize the counterfactual distributions, introducing a
framework that assumes a latent structure shared by these distributions. Our
model offers flexibility by avoiding strict parametric assumptions on the
counterfactual distributions. Specifically, the DRM incorporates a
nonparametric component that can be estimated through the method of empirical
likelihood (EL), using the data from all the groups stemming from multiple
interventions. Consequently, the EL-DRM framework enables inference of the
counterfactual distribution functions and their functionals, facilitating
direct and transparent causal inference from a distributional perspective.
Numerical studies on both synthetic and real-world data validate the
effectiveness of our approach. |
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DOI: | 10.48550/arxiv.2411.00950 |