Undersmoothed LASSO Models for Propensity Score Weighting and Synthetic Negative Control Exposures for Bias Detection
Richard Wyss, Ben B. Hansen, Georg Hahn, Lars van der Laan, and Kueiyu Joshua Lin

TL;DR
This paper proposes a method for selecting the degree of undersmoothing in LASSO propensity score models using balance metrics and introduces synthetic negative control exposures to detect bias, improving causal inference in high-dimensional healthcare data.
Contribution
It introduces a practical framework for undersmoothing LASSO PS models with balance metrics and proposes synthetic negative controls for bias detection when the influence function is unknown.
Findings
Balance metrics can effectively guide undersmoothing of LASSO models.
Synthetic negative control exposures can identify biased analyses.
The proposed methods improve bias detection in high-dimensional settings.
Abstract
The propensity score (PS) is often used to control for large numbers of covariates in high-dimensional healthcare database studies. The least absolute shrinkage and selection operator (LASSO) has become the most widely used tool for fitting large-scale PS models in these settings. LASSO uses L1 regularized regression to prevent overfitting by shrinking coefficients toward zero (setting some exactly to zero). The degree of regularization is typically selected using cross-validation to minimize out-of-sample prediction error. Both theory and simulations have shown, however, that when using LASSO models for PS weighting, less regularization is needed to minimize bias in PS weighted estimators. This is referred to as undersmoothing the LASSO model, where the optimal degree of undersmoothing can be derived from the target causal parameter's efficient influence function. In many settings,…
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