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Activity Number: 6 - Highlights in 'Bayesian Analysis': Stories to Tell
Type: Invited
Date/Time: Sunday, August 8, 2021 : 1:30 PM to 3:20 PM
Sponsor: Section on Bayesian Statistical Science
Abstract #315527
Title: Can Multilevel Regression and Poststratification Estimate Conditional Treatment Effects from Complex Experimental Data?
Author(s): Yuxiang Gao* and Daniel Simpson and Lauren Kennedy
Companies: University of Toronto and University of Toronto and Monash University
Keywords: Causal inference; Multilevel regression and poststratification; small-area estimation
Abstract:

Multilevel regression and poststratification (MRP) is a flexible modeling technique that has been used in a broad range of small-area estimation problems. Traditionally, MRP studies have been focused on estimating a single value, like a conditional mean, from a nonrepresentative sample. Nonrepresentative samples often occur in experimental data, and adjusting for nonrepresentativeness is commonly done using causal inference techniques, many of which have analogies in survey sampling literature. In this talk, I will extend this analogy to using MRP-type methods for estimating causal effects. We simulate a large-scale randomized control trial based on a complex experimental design, and compare traditional and nonparametric treatment effect estimation methods with newly developed MRP methodology for experimental causal inference. The context of the simulation study is to evaluate how effective an education intervention is on the GPA of high-school students in the US, when the experiment is run using a stratified cluster design. Using MRP, we produce treatment effect estimates for small-areas in the population that have lower bias and variance than standard causal inference methods.


Authors who are presenting talks have a * after their name.

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