Response to Discussions of "Causal and Counterfactual Views of Missing Data Models"
By: Razieh Nabi , Rohit Bhattacharya , Ilya Shpitser and more
Potential Business Impact:
Fixes problems in how we understand science.
We are grateful to the discussants, Levis and Kennedy [2025], Luo and Geng [2025], Wang and van der Laan [2025], and Yang and Kim [2025], for their thoughtful comments on our paper (Nabi et al., 2025). In this rejoinder, we summarize our main contributions and respond to each discussion in turn.
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