Direct Bias-Correction Term Estimation for Average Treatment Effect Estimation
Abstract
This study considers the estimation of the direct bias-correction term for estimating the average treatment effect (ATE). Let \(Xi, Di, Yi)\i=1n be the observations, where Xi denotes K-dimensional covariates, Di ∈ \0, 1\ denotes a binary treatment assignment indicator, and Yi denotes an outcome. In ATE estimation, h0(Di, Xi) = 1[Di = 1]e0(Xi) - 1[Di = 0]1 - e0(Xi) is called the bias-correction term, where e0(Xi) is the propensity score. The bias-correction term is also referred to as the Riesz representer or clever covariates, depending on the literature, and plays an important role in construction of efficient ATE estimators. In this study, we propose estimating h0 by directly minimizing the Bregman divergence between its model and h0, which includes squared error and Kullback--Leibler divergence as special cases. Our proposed method is inspired by direct density ratio estimation methods and generalizes existing bias-correction term estimation methods, such as covariate balancing weights, Riesz regression, and nearest neighbor matching. Importantly, under specific choices of bias-correction term models and Bregman divergence, we can automatically ensure the covariate balancing property. Thus, our study provides a practical modeling and estimation approach through a generalization of existing methods.
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