| VIMP_cfg | R Documentation |
VIMP_cfg is a configuration class for estimating a variable importance measure
across all moderators. This provides a meaningful measure of which moderators
explain the most of the CATE surface.
estimandString indicating the estimand to target.
sample_splittingLogical indicating whether to use sample splitting in the calculation of variable importance.
linearLogical indicating whether the variable importance assuming a linear model should be estimated.
new()Create a new VIMP_cfg object with specified model configuration.
VIMP_cfg$new(sample_splitting = TRUE, linear_only = FALSE)
sample_splittingLogical indicating whether to use sample splitting in the calculation of variable importance. Choosing not to use sample splitting means that inference will only be valid for moderators with non-null importance.
linear_onlyLogical indicating whether the variable importance should use only a single linear-only model. Variable importance measure will only be consistent for the population quantity if the true model of pseudo-outcomes is linear.
A new VIMP_cfg object.
VIMP_cfg$new()
clone()The objects of this class are cloneable with this method.
VIMP_cfg$clone(deep = FALSE)
deepWhether to make a deep clone.
Williamson, B. D., Gilbert, P. B., Carone, M., & Simon, N. (2021). Nonparametric variable importance assessment using machine learning techniques. Biometrics, 77(1), 9-22.
Williamson, B. D., Gilbert, P. B., Simon, N. R., & Carone, M. (2021). A general framework for inference on algorithm-agnostic variable importance. Journal of the American Statistical Association, 1-14.
VIMP_cfg$new()
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## Method `VIMP_cfg$new`
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VIMP_cfg$new()
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