Declarative API for Staged Survey Weights


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Documentation for package ‘weightflow’ version 0.1.0

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as_svrepdesign Export weightflow weights to a survey design
as_svydesign Export weightflow weights to a survey design
bootstrap_estimate Bootstrap estimate, standard error and confidence interval
bootstrap_weights Bootstrap replicate weights that re-apply the recipe
boot_mean Bootstrap estimate, standard error and confidence interval
boot_total Bootstrap estimate, standard error and confidence interval
collect_replicate_weights Collect replicate weights into a data frame ready for srvyr
collect_weights Extract the data with the computed weights
design_effect Kish design effect from unequal weighting
plot.prepped_weighting_spec Diagnostic plots for the weights
population Example target population for weightflow
prep Estimate the weighting cascade
report_weighting Build a nice HTML report of the weighting recipe
sample_one Example survey sample (select-one-person, multistage)
sample_survey Example survey sample (take-all roster)
step_assert Assert conditions on the weights at this point of the cascade
step_calibrate Calibration to population totals
step_drop_ineligible Drop ineligible (out-of-scope) units
step_model_calibration Model calibration (model-assisted, Wu & Sitter 2001)
step_nonresponse Nonresponse adjustment
step_rescale Rescale (normalize) the weights
step_round Round the final weights
step_select_within Within-household selection adjustment
step_trim Trim extreme weights
step_trim_weights Automatic weight trimming (survey-style)
step_unknown_eligibility Unknown-eligibility adjustment
summary.prepped_weighting_spec Detailed per-step diagnostics
weighting_spec Start a weighting specification
weight_factors Per-unit adjustment factors table
y_model Specify a working model for a study variable y