Description
Causal Inference with High-Dimensional Error-Prone Covariates and Misclassified Treatments.
Description
We aim to deal with the average treatment effect (ATE), where the data are subject to high-dimensionality and measurement error. This package primarily contains two functions, which are used to generate artificial data and estimate ATE with high-dimensional and error-prone data accommodated.