Online Causal Inference Seminar: The Categorical Instrumental Variable Model: Characterization, Partial Identification, and Statistical Inference
- đ¤ Speaker: Richard Guo (University of Michigan), Yilin Song (University of Washington)
- đ Date & Time: Tuesday 13 January 2026, 16:30 - 17:30
- đ Venue: Discussion Room, Newton Institute
Abstract
We study categorical instrumental variable (IV) models with instrument, treatment, and outcome taking finitely many values. We derive a simple closed-form characterization of the set of joint distributions of potential outcomes that are compatible with a given observed data distribution in terms of a set of inequalities. These inequalities unify several different IV models defined by versions of the independence and exclusion restriction assumptions and are shown to be non-redundant. Finally, given a set of linear functionals of the joint counterfactual distribution, such as pairwise average treatment effects, we construct confidence intervals with simultaneous finite-sample coverage, using a tail bound on the Kullback—Leibler divergence. We illustrate our method using data from the Minneapolis Domestic Violence Experiment. Discussant: Desire Kedagni (University of North Carolina – Chapel Hill) [Paper] Further details about the seminars are available on the OCIS webpage
Series This talk is part of the Isaac Newton Institute Seminar Series series.
Included in Lists
- All CMS events
- bld31
- dh539
- Discussion Room, Newton Institute
- Featured lists
- INI info aggregator
- Isaac Newton Institute Seminar Series
- School of Physical Sciences
Note: Ex-directory lists are not shown.
![[Talks.cam]](/static/images/talkslogosmall.gif)

Richard Guo (University of Michigan), Yilin Song (University of Washington)
Tuesday 13 January 2026, 16:30-17:30