A helper loop function to clean up the internals of drtmle
function.
estimateQ_loop(validRows, Y, A, W, DeltaA, DeltaY, verbose, returnModels, SL_Q,
a_0, stratify, glm_Q, family, use_future, se_cv, se_cvFolds)A list of length cvFolds containing the row
indexes of observations to include in validation fold.
A vector of continuous or binary outcomes.
A vector of binary treatment assignment (assumed to be equal to 0 or 1)
A data.frame of named covariates
Indicator of missing treatment (assumed to be equal to 0 if missing 1 if observed)
Indicator of missing outcome (assumed to be equal to 0 if missing 1 if observed)
A boolean indicating whether to print status updates.
A boolean indicating whether to return model fits for the outcome regression, propensity score, and reduced-dimension regressions.
A vector of characters or a list describing the Super Learner
library to be used for the outcome regression. See
SuperLearner for details.
A list of fixed treatment values.
A boolean indicating whether to estimate the outcome
regression separately for different values of A (if TRUE) or
to pool across A (if FALSE).
A character describing a formula to be used in the call to
glm for the outcome regression. Ignored if SL_Q!=NULL.
Should be gaussian() unless called from adaptive_iptw with
binary Y.
Boolean indicating whether to use future_lapply or
instead to just use lapply. The latter can be easier to run down errors.
Should cross-validated nuisance parameter estimates be used
for computing standard errors?
Options are "none" = no cross-validation is performed; "partial" =
only applicable if Super Learner is used for nuisance parameter estimates;
"full" = full cross-validation is performed. See vignette for further
details. Ignored if cvFolds > 1, since then
cross-validated nuisance parameter estimates are used by default and it is
assumed that you want full cross-validated standard errors.
If cross-validated nuisance parameter estimates are used
to compute standard errors, how many folds should be used in this computation.
If se_cv = "partial", then this option sets the number of folds used
by the SuperLearner fitting procedure.