A Multi-Task Gaussian Process Model for Inferring Time-Varying Treatment Effects in Panel Data

Yehu Chen, Annamaria Prati, Jacob Montgomery, Roman Garnett

Research output: Contribution to journalConference articlepeer-review

5 Scopus citations

Abstract

We introduce a Bayesian multi-task Gaussian process model for estimating treatment effects from panel data, where an intervention outside the observer's control influences a subset of the observed units. Our model encodes structured temporal dynamics both within and across the treatment and control groups and incorporates a flexible prior for the evolution of treatment effects over time. These innovations aid in inferring posteriors for dynamic treatment effects that encode our uncertainty about the likely trajectories of units in the absence of treatment. We also discuss the asymptotic properties of the joint posterior over counterfactual outcomes and treatment effects, which exhibits intuitive behavior in the large-sample limit. In experiments on both synthetic and real data, our approach performs no worse than existing methods and significantly better when standard assumptions are violated.

Original languageEnglish
Pages (from-to)4068-4088
Number of pages21
JournalProceedings of Machine Learning Research
Volume206
StatePublished - 2023
Event26th International Conference on Artificial Intelligence and Statistics, AISTATS 2023 - Valencia, Spain
Duration: Apr 25 2023Apr 27 2023

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