survey (version 4.1-1)

postStratify: Post-stratify a survey


Post-stratification adjusts the sampling and replicate weights so that the joint distribution of a set of post-stratifying variables matches the known population joint distribution. Use rake when the full joint distribution is not available.


postStratify(design, strata, population, partial = FALSE, ...)
# S3 method for
postStratify(design, strata, population, partial = FALSE, compress=NULL,...)
# S3 method for
postStratify(design, strata, population, partial = FALSE, ...)



A survey design with replicate weights


A formula or data frame of post-stratifying variables, which must not contain missing values.


A table, xtabs or data.frame with population frequencies


if TRUE, ignore population strata not present in the sample


Attempt to compress the replicate weight matrix? When NULL will attempt to compress if the original weight matrix was compressed


arguments for future expansion


A new survey design object.


The population totals can be specified as a table with the strata variables in the margins, or as a data frame where one column lists frequencies and the other columns list the unique combinations of strata variables (the format produced by acting on a table object). A table must have named dimnames to indicate the variable names.

Compressing the replicate weights will take time and may even increase memory use if there is actually little redundancy in the weight matrix (in particular if the post-stratification variables have many values and cut across PSUs).

If a svydesign object is to be converted to a replication design the post-stratification should be performed after conversion.

The variance estimate for replication designs follows the same procedure as Valliant (1993) described for estimating totals. Rao et al (2002) describe this procedure for estimating functions (and also the GREG or g-calibration procedure, see calibrate)


Valliant R (1993) Post-stratification and conditional variance estimation. JASA 88: 89-96

Rao JNK, Yung W, Hidiroglou MA (2002) Estimating equations for the analysis of survey data using poststratification information. Sankhya 64 Series A Part 2, 364-378.

See Also

rake, calibrate for other things to do with auxiliary information

compressWeights for information on compressing weights


Run this code
dclus1<-svydesign(id=~dnum, weights=~pw, data=apiclus1, fpc=~fpc)

svymean(~api00, rclus1)
svytotal(~enroll, rclus1)

# post-stratify on school type
pop.types <- data.frame(stype=c("E","H","M"), Freq=c(4421,755,1018))
#or: pop.types <- xtabs(~stype, data=apipop)
#or: pop.types <- table(stype=apipop$stype)

rclus1p<-postStratify(rclus1, ~stype, pop.types)
svymean(~api00, rclus1p)
svytotal(~enroll, rclus1p)

## and for svydesign objects
dclus1p<-postStratify(dclus1, ~stype, pop.types)
svymean(~api00, dclus1p)
svytotal(~enroll, dclus1p)
# }

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