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Primary Submission Category: Weighting

Targeted Function Balancing

Authors: Leonard Wainstein,

Presenting Author: Leonard Wainstein*

This paper introduces Targeted Function Balancing (TFB), a covariate balancing weights framework for estimating the average treatment effect of a binary intervention. TFB first regresses an outcome on covariates, and then selects weights that balance functions (of the covariates) that are probabilistically near the resulting regression function. This yields balance in the regression function’s predicted values and the covariates, with the regression function’s estimated variance determining how much balance in the covariates is sufficient. Notably, TFB demonstrates that intentionally leaving imbalance in some covariates can increase efficiency without introducing bias, challenging traditions that warn against imbalance in any variable. Additionally, TFB is entirely defined by a regression function and its estimated variance, turning the problem of how best to balance the covariates into how best to model the outcome. Kernel regularized least squares and the LASSO are considered as regression estimators. With the former, TFB contributes to the literature of kernel-based weights. As for the LASSO, TFB uses the regression function’s estimated variance to prioritize balance in certain dimensions of the covariates, a feature that can be greatly exploited by choosing a sparse regression estimator. This paper also introduces a balance diagnostic, Targeted Function Imbalance, that may have useful applications.