svrepdesign(variables = NULL, repweights = NULL, weights = NULL, data =
NULL, type = c("BRR", "Fay", "JK1","JKn","other"),
combined.weights=FALSE, rho = NULL,
scale=NULL, rscales=NULL,fpc=NULL, fpctype=c("fraction","correction"))
## S3 method for class 'svyrep.design':
image(x, ..., col=grey(seq(.5,1,length=30)), type.=c("rep","total"))
TRUE
if the repweights
already
include the sampling weightsimage
"rep"
for only the replicate weights, "total"
for the replicate and sampling weights combined.svyrep.design
, with methods for print
,
summary
, weights
, image
.rho
in one half-sample and 2-rho
in the
other. The ideal BRR analysis is restricted to a design where each
stratum has two PSUs, however, it has been used in a much wider class
of surveys.
The JK1 and JKn types are both jackknife estimators deleting one
cluster at a time. JKn is designed for stratified and JK1 for
unstratified designs.
The variance is computed as the sum of squared deviations of the
replicates from their mean. This may be rescaled: scale
is an
overall multiplier and rscale
is a vector of
replicate-specific multipliers for the squared deviations. If the
replication weights incorporate the sampling weights
(combined.weights=TRUE
) or for type="other"
these must
be specified, otherwise they can be guessed from the weights.
A finite population correction may be specified for type="other"
,
type="JK1"
and type="JKn"
. fpc
must be a vector
with one entry for each replicate. To specify sampling fractions use
fpctype="fraction"
and to specify the correction directly use
fpctype="correction"
To generate your own replicate weights either use
as.svrepdesign
on a survey.design
object, or see
brrweights
, jk1weights
and jknweights
as.svrepdesign
, svydesign
, brrweights
data(scd)
# use BRR replicate weights from Levy and Lemeshow
repweights<-2*cbind(c(1,0,1,0,1,0), c(1,0,0,1,0,1), c(0,1,1,0,0,1),
c(0,1,0,1,1,0))
scdrep<-svrepdesign(data=scd, type="BRR", repweights=repweights)
svrepratio(~alive, ~arrests, scdrep)
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