Estimation of causal dose-response functions under data fusion

Jaewon Lim Speaker
 
Alex Luedtke Co-Author
 
Monday, Aug 3: 11:20 AM - 11:35 AM
3316 
Contributed Papers 
Thomas M. Menino Convention & Exhibition Center 
Estimating the causal dose-response function is challenging, particularly when data from a single source are insufficient to estimate responses precisely across all exposure levels. To overcome this limitation, we propose a data fusion framework that leverages multiple data sources that are partially aligned with the target distribution. Specifically, we derive a Neyman-orthogonal loss function tailored for estimating the dose-response function within data fusion settings. To improve computational efficiency, we propose a stochastic approximation that retains orthogonality. We apply kernel ridge regression with this approximation, which provides closed-form estimators. Our theoretical analysis demonstrates that incorporating additional data sources yields tighter finite-sample regret bounds and improved worst-case performance, as confirmed via minimax lower bound comparison. Simulation studies validate the practical advantages of our approach, showing improved estimation accuracy when employing data fusion. This study highlights the potential of data fusion for estimating non-smooth parameters such as causal dose-response functions.

Keywords

Data fusion

Orthogonal statistical learning

Causal dose-response function

Minimax

Reproducing kernel Hilbert space 

Main Sponsor

Section on Statistical Learning and Data Science