Double Machine Learning of Continuous Treatment Effects with General Instrumental Variables
By: Shuyuan Chen, Peng Zhang, Yifan Cui
Potential Business Impact:
Fixes unfairness in medical studies with hidden factors.
Estimating causal effects of continuous treatments is a common problem in practice, for example, in studying dose-response functions. Classical analyses typically assume that all confounders are fully observed, whereas in real-world applications, unmeasured confounding often persists. In this article, we propose a novel framework for local identification of dose-response functions using instrumental variables, thereby mitigating bias induced by unobserved confounders. We introduce the concept of a uniform regular weighting function and consider covering the treatment space with a finite collection of open sets. On each of these sets, such a weighting function exists, allowing us to identify the dose-response function locally within the corresponding region. For estimation, we develop an augmented inverse probability weighting score for continuous treatments under a debiased machine learning framework with instrumental variables. We further establish the asymptotic properties when the dose-response function is estimated via kernel regression or empirical risk minimization. Finally, we conduct both simulation and empirical studies to assess the finite-sample performance of the proposed methods.
Similar Papers
Identification and Debiased Learning of Causal Effects with General Instrumental Variables
Methodology
Finds true causes even with hidden factors.
Marginal Causal Effect Estimation with Continuous Instrumental Variables
Methodology
Finds true causes of health problems from data.
Nonparametric Estimation of Local Treatment Effects with Continuous Instruments
Methodology
Helps doctors understand how treatments really work.