This paper develops a sparsity-inducing version of Bayesian Causal Forests, a recently proposed nonparametric causal regression model that employs Bayesian Additive Regression Trees and is specifically designed to estimate heterogeneous treatment effects using observational data. The sparsity-inducing component we introduce is motivated by empirical studies where the number of pre-treatment covariates available is non-negligible, leading to different degrees of sparsity underlying the surfaces of interest in the estimation of individual treatment effects. The extended version presented in this work, which we name Sparse Bayesian Causal Forest, is equipped with an additional pair of priors allowing the model to adjust the weight of each covariate through the corresponding number of splits in the tree ensemble. These priors improve the model's adaptability to sparse settings and allow to perform fully Bayesian variable selection in a framework for treatment effects estimation, and thus to uncover the moderating factors driving heterogeneity. In addition, the method allows prior knowledge about the relevant confounding pre-treatment covariates and the relative magnitude of their impact on the outcome to be incorporated in the model. We illustrate the performance of our method in simulated studies, in comparison to Bayesian Causal Forest and other state-of-the-art models, to demonstrate how it scales up with an increasing number of covariates and how it handles strongly confounded scenarios. Finally, we also provide an example of application using real-world data.
翻译:本文开发了一种无孔不入的Bayesian Causal Forest, 这是一种最近提出的非参数性因果回归模型,使用Bayesian Additive Regression Forests使用Bayesian Aditive Regress, 专门设计用于利用观测数据估计不同处理效果。我们引入的偏振性诱导部分是由经验研究推动的,这些实验研究使预处理共变因素的数量不易忽略,从而在估计个人治疗效果方面感兴趣的表面下形成了不同程度的宽度。本作品中介绍的扩展版,我们称之为Sparse Bayesian Causal Forest, 配备了另外一套前一款,使模型能够通过树团中相应数量的拆分数来调整每个共变数的重量。这些前一款改进了模型对稀少环境的适应性,并在一个治疗效果估计框架中充分进行拜斯变量选择,从而发现驱动异性作用的调因素。此外,该方法还允许事先了解相关的处理前变变式模型, 以及它们相对规模的变形法应用方法,我们在模拟模型中如何将结果转化为结果纳入。