Covariate Adjustment and Balancing under Interference
Автор: Seminar Series: Women in Data Science and Maths
Загружено: 2026-02-26
Просмотров: 38
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Talk Title: Covariate Adjustment and Balancing under Interference.
Speaker: Prof. Shuangning Li
Time: Feb 25, 2026.
Abstract: Covariates are routinely used to improve precision in randomized experiments, yet their role becomes subtle when interference is present, that is, when the outcome of one unit may depend on the treatment assignments of other units. This talk will study how covariate information can be used, both at the analysis stage and the design stage, to improve inference under interference.
In the first part, Prof. Shuangning Li will discuss recent work on covariate adjustment for estimating global treatment effects under network interference. Unlike the classical no-interference setting, direct regression adjustment can increase the asymptotic variance of estimators in the presence of interference. Building on a low-order interaction outcome model, they construct covariate-adjusted estimators that remain asymptotically unbiased and achieve variance no larger than their unadjusted counterparts under sparsity conditions on the interference network.
In the second part, Prof. Shuangning Li will turn to covariate balancing through rerandomization as a design-stage tool for experiments with interference. She will discuss how rerandomization can be used to enforce balance on pre-treatment covariates or on constructed exposure-related features. They show that, under mild assumptions, rerandomization yields asymptotic variance reductions for standard estimators in a model-agnostic manner, without requiring correct specification or even knowledge of the underlying interference structure.
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