Propensity Score Modeling: Key Challenges When Moving Beyond the No-Interference Assumption

08/13/2022
by   Hyunseung Kang, et al.
0

The paper presents some models for the propensity score. Considerable attention is given to a recently popular, but relatively under-explored setting in causal inference where the no-interference assumption does not hold. We lay out some key challenges in propensity score modeling under interference and present a few promising models based on existing works on mixed effects models.

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