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通过轮廓迁移学习消除混杂效应

Deconfounding via Profiled Transfer Learning

Journal of the American Statistical Association · 2026
被引 0 · 同刊同年前 8%
ABS 4

中文导读

提出ProTrans框架,利用具有相似混杂结构的源数据集,通过轮廓残差消除目标数据集中的未测量混杂效应,并证明估计量达到极小化最优速率。

Abstract

Unmeasured confounders are a major source of bias in regression-based effect estimation and causal inference. In this paper, we propose a new profiled transfer learning framework, ProTrans, to address confounding effects in the target dataset, when additional source datasets with similar confounding structures are available. We introduce the concept of profiled residuals to characterize the shared confounding patterns between source and target datasets. By incorporating these profiled residuals into the target debiasing step, we effectively mitigate the latent confounding effects. We also propose a source selection strategy to enhance the robustness of ProTrans to noninformative sources. As a byproduct, ProTrans can also be used to estimate treatment effects in the presence of potential confounders, without the use of auxiliary features such as instrumental or proxy variables, which are often challenging to select in practice. Theoretically, we prove that the resulting estimated model shift from the sources to the target is confounding-free without imposing specific assumptions on the true confounding structure, and that the target parameter estimation achieves the minimax optimal rate under mild conditions. Simulated and real-world experiments validate the effectiveness of ProTrans and support the theoretical findings.

因果推断迁移学习统计学习混杂效应