Some recent large-scale surveys specify replication weights rather than the sampling design (partly for privacy reasons). This function specifies the data structure for such a survey.
svrepdesign(variables , repweights , weights, data,...)
# S3 method for default
svrepdesign(variables = NULL, repweights = NULL, weights = NULL, 
   data = NULL, type = c("BRR", "Fay", "JK1","JKn","bootstrap",
   "ACS","successive-difference","JK2","other"),
   combined.weights=TRUE, rho = NULL, bootstrap.average=NULL,
   scale=NULL, rscales=NULL,fpc=NULL, fpctype=c("fraction","correction"),
   mse=getOption("survey.replicates.mse"),...)
# S3 method for imputationList
svrepdesign(variables=NULL, repweights,weights,data,
   mse=getOption("survey.replicates.mse"),...)
# S3 method for character
svrepdesign(variables=NULL,repweights=NULL, weights=NULL,data=NULL,
type=c("BRR","Fay","JK1", "JKn","bootstrap","ACS","successive-difference","JK2","other"),
combined.weights=TRUE, rho=NULL, bootstrap.average=NULL, scale=NULL,rscales=NULL,
fpc=NULL,fpctype=c("fraction","correction"),mse=getOption("survey.replicates.mse"),
 dbtype="SQLite", dbname,...) # S3 method for svyrep.design
image(x, ...,
				 col=grey(seq(.5,1,length=30)), type.=c("rep","total"))
formula or data frame specifying variables to include in the design (default is all)
formula or data frame specifying replication weights, or character string specifying a regular expression that matches the names of the replication weight variables
sampling weights
data frame to look up variables in formulas, or character string giving name of database table
Type of replication weights
TRUE if the repweights already
    include the sampling weights. This is usually the case.
Shrinkage factor for weights in Fay's method
For type="bootstrap", if the bootstrap
    weights have been averaged, gives the number of iterations averaged over
Scaling constant for variance, see Details below
Finite population correction information
If TRUE, compute variances based on sum of squares
  around the point estimate, rather than the mean of the replicates
name of database, passed to DBI::dbConnect()
Database driver: see Details
survey design with replicate weights
Other arguments to image
Colors
"rep" for only the replicate weights, "total" for the replicate and sampling weights combined.
Object of class svyrep.design, with methods for print,
  summary, weights, image.
In the BRR method, the dataset is split into halves, and the
  difference between halves is used to estimate the variance. In Fay's
  method, rather than removing observations from half the sample they
  are given weight 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 scale and rscales
 arguments will be ignored (with a warning) if they are specified.
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 successive-difference weights in the American Community Survey
 automatically use scale = 4/ncol(repweights) and rscales=rep(1,
   ncol(repweights)). This can be specified as type="ACS" or
 type="successive-difference". The scale and rscales
 arguments will be ignored (with a warning) if they are specified.
JK2 weights (type="JK2"), as in the California Health Interview
 Survey, automatically use scale=1,  rscales=rep(1, ncol(repweights)).
 The scale and rscales
 arguments will be ignored (with a warning) if they are specified.
Averaged bootstrap weights ("mean bootstrap") are used for some surveys from Statistics Canada. Yee et al (1999) describe their construction and use for one such survey.
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 rscales is a vector of
  replicate-specific multipliers for the squared deviations. That is,
  rscales should have one entry for each column of repweights
  If thereplication 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"
repweights may be a character string giving a regular expression
 for the replicate weight variables. For example, in the
California Health Interview Survey public-use data, the sampling weights are
"rakedw0" and the replicate weights are "rakedw1" to
"rakedw80".  The regular expression "rakedw[1-9]"
matches the replicate weight variables (and not the sampling weight
variable).
data may be a character string giving the name of a table or view
in a relational database that can be accessed through the DBI 
interface. For DBI interfaces dbtype should be the name of the database
driver and dbname should be the name by which the driver identifies
the specific database (eg file name for SQLite).
The appropriate database interface package must already be loaded (eg
RSQLite for SQLite).  The survey design
object will contain the replicate weights, but actual variables will
be loaded from the database only as needed.  Use
close to close the database connection and
open to reopen the connection, eg, after
loading a saved object.
The database interface does not attempt to modify the underlying database and so can be used with read-only permissions on the database.
To generate your own replicate weights either use
  as.svrepdesign on a survey.design object, or see
  brrweights, bootweights,
  jk1weights and jknweights
The model.frame method extracts the observed data.
Levy and Lemeshow. "Sampling of Populations". Wiley.
Shao and Tu. "The Jackknife and Bootstrap." Springer.
Yee et al (1999). Bootstrat Variance Estimation for the National Population Health Survey. Proceedings of the ASA Survey Research Methodology Section. https://web.archive.org/web/20151110170959/http://www.amstat.org/sections/SRMS/Proceedings/papers/1999_136.pdf
as.svrepdesign, svydesign,
  brrweights, bootweights
# NOT RUN {
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, combined.weights=FALSE)
svyratio(~alive, ~arrests, scdrep)
# }
# NOT RUN {
## Needs RSQLite
library(RSQLite)
db_rclus1<-svrepdesign(weights=~pw, repweights="wt[1-9]+", type="JK1", scale=(1-15/757)*14/15,
data="apiclus1rep",dbtype="SQLite", dbname=system.file("api.db",package="survey"), combined=FALSE)
svymean(~api00+api99,db_rclus1)
summary(db_rclus1)
## closing and re-opening a connection
close(db_rclus1)
db_rclus1
try(svymean(~api00+api99,db_rclus1))
db_rclus1<-open(db_rclus1)
svymean(~api00+api99,db_rclus1)
# }
# NOT RUN {
# }
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