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基于贝叶斯决策树集成的异质性因果中介效应估计

Estimating Heterogeneous Causal Mediation Effects with Bayesian Decision Tree Ensembles

Journal of the American Statistical Association · 2025
被引 2
ABS 4

中文导读

提出一种基于贝叶斯加性回归树的可变系数模型,用于估计和正则化异质性因果中介效应,在大型数据集上比传统方法更稳定,并可通过后验总结识别有趣子群。

Abstract

The causal inference literature has increasingly recognized that targeting treatment effect heterogeneity can lead to improved scientific understanding and policy recommendations. Similarly, studying the causal pathway connecting the treatment to the outcome can be useful. We address these problems in the context of causal mediation analysis . We introduce a varying coefficient model based on Bayesian additive regression trees to estimate and regularize heterogeneous causal mediation effects. Even on large datasets with few covariates, we show LSEMs can produce highly unstable estimates of the conditional average direct and indirect effects, while our Bayesian causal mediation forests model produces stable estimates. We find that our approach is conservative, with effect estimates “shrunk towards homogeneity.” Using data from the Medical Expenditure Panel Survey and empirically-grounded simulated data, we examine the salient properties of our method. Finally, we show how our model can be combined with posterior summarization strategies to identify interesting subgroups and interpret the model fit.

因果推断中介分析贝叶斯统计机器学习计量经济学