Sparse Bayesian Causal Forests for Heterogeneous Treatment Effects
Estimation
- URL: http://arxiv.org/abs/2102.06573v1
- Date: Fri, 12 Feb 2021 15:24:50 GMT
- Title: Sparse Bayesian Causal Forests for Heterogeneous Treatment Effects
Estimation
- Authors: Alberto Caron, Gianluca Baio and Ioanna Manolopoulou
- Abstract summary: This paper develops a sparsity-inducing version of Bayesian Causal Forests.
It is designed to estimate heterogeneous treatment effects using observational data.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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