Control Function Instrumental Variable Estimation of Nonlinear Causal Effect Models
Zijian Guo, Dylan Small

TL;DR
This paper compares two instrumental variable estimators for nonlinear causal models, introduces a combined estimator, and proposes a validity test to improve estimation accuracy in the presence of unmeasured confounding.
Contribution
It systematically compares two estimators for nonlinear models, develops a combined estimator, and introduces a validity test for augmented instrumental variables.
Findings
The combined estimator outperforms individual estimators in simulations.
The Hausman test effectively detects invalid augmented instruments.
Application demonstrates improved causal effect estimation in real data.
Abstract
The instrumental variable method consistently estimates the effect of a treatment when there is unmeasured confounding and a valid instrumental variable. A valid instrumental variable is a variable that is independent of unmeasured confounders and affects the treatment but does not have a direct effect on the outcome beyond its effect on the treatment. Two commonly used estimators for using an instrumental variable to estimate a treatment effect are the two stage least squares estimator and the control function estimator. For linear causal effect models, these two estimators are equivalent, but for nonlinear causal effect models, the estimators are different. We provide a systematic comparison of these two estimators for nonlinear causal effect models and develop an approach to combing the two estimators that generally performs better than either one alone. We show that the control…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Gender, Labor, and Family Dynamics · Statistical Methods and Bayesian Inference
