Identification of Treatment Effects Under Conditional Partial Independence
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2018-01
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Abstract
Conditional independence of treatment assignment from potential outcomes is a commonly used but nonrefutable assumption. We derive identified sets for various treatment effect parameters under nonparametric deviations from this conditional independence assumption. These deviations are defined via a conditional treatment assignment probability, which makes it straightforward to interpret. Our results can be used to assess the robustness of empirical conclusions obtained under the baseline conditional independence assumption.
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Scholars@Duke

Matthew A Masten
I’m an econometrician working on identification and causal inference. My current focus is on robustness and sensitivity analysis.
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