bootweights {survey} | R Documentation |
Compute survey bootstrap weights
Description
Bootstrap weights for infinite populations ('with replacement' sampling) are created by sampling with
replacement from the PSUs in each stratum. subbootweights()
samples n-1
PSUs from the n
available (Rao and Wu),
bootweights
samples n
(Canty and Davison).
For multistage designs or those with large sampling fractions,
mrbweights
implements Preston's multistage rescaled
bootstrap. The multistage rescaled bootstrap is still useful for
single-stage designs with small sampling fractions, where it reduces
to a half-sample replicate method.
Usage
bootweights(strata, psu, replicates = 50, fpc = NULL,
fpctype = c("population", "fraction", "correction"),
compress = TRUE)
subbootweights(strata, psu, replicates = 50, compress = TRUE)
mrbweights(clusters, stratas, fpcs, replicates=50,
multicore=getOption("survey.multicore"))
Arguments
strata |
Identifier for sampling strata (top level only) |
stratas |
data frame of strata for all stages of sampling |
psu |
Identifier for primary sampling units |
clusters |
data frame of identifiers for sampling units at each stage |
replicates |
Number of bootstrap replicates |
fpc |
Finite population correction (top level only) |
fpctype |
Is |
fpcs |
|
compress |
Should the replicate weights be compressed? |
multicore |
Use the |
Value
A set of replicate weights
warning
With multicore=TRUE
the resampling procedure does not
use the current random seed, so the results cannot be exactly
reproduced even by using set.seed()
Note
These bootstraps are strictly appropriate only when the first stage of sampling is a simple or stratified random sample of PSUs with or without replacement, and not (eg) for PPS sampling. The functions will not enforce simple random sampling, so they can be used (approximately) for data that have had non-response corrections and other weight adjustments. It is preferable to apply these adjustments after creating the bootstrap replicate weights, but that may not be possible with public-use data.
References
Canty AJ, Davison AC. (1999) Resampling-based variance estimation for labour force surveys. The Statistician 48:379-391
Judkins, D. (1990), "Fay's Method for Variance Estimation" Journal of Official Statistics, 6, 223-239.
Preston J. (2009) Rescaled bootstrap for stratified multistage sampling. Survey Methodology 35(2) 227-234
Rao JNK, Wu CFJ. Bootstrap inference for sample surveys. Proc Section on Survey Research Methodology. 1993 (866–871)