AteMeVs
Average Treatment Effects with Measurement Error and Variable Selection for Confounders
A recent method proposed by Yi and Chen (2023) doi:10.1177/09622802221146308 is used to estimate the average treatment effects using noisy data containing both measurement error and spurious variables. The package 'AteMeVs' contains a set of functions that provide a step-by-step estimation procedure, including the correction of the measurement error effects, variable selection for building the model used to estimate the propensity scores, and estimation of the average treatment effects. The functions contain multiple options for users to implement, including different ways to correct for the measurement error effects, distinct choices of penalty functions to do variable selection, and various regression models to characterize propensity scores.
- Version0.1.0
- R versionunknown
- LicenseGPL-2
- Needs compilation?Yes
- Last release09/04/2023
Team
Li-Pang Chen
Grace Yi
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- Imports2 packages