Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Does anyone know how to use BRR weights in Lumley's survey package for estimating variance if your dataset already has BRR weights it in?

I am working with PISA data, and they already include 80 BRR replicates in their dataset. How can I get as.svrepdesign to use these, instead of trying to create its own? I tried the following and got the subsequent error:

dstrat <- svydesign(id=~uniqueID,strata=~strataVar, weights=~studentWeight, 
                data=data, nest=TRUE)
dstrat <- as.svrepdesign(dstrat, type="BRR")

Error in brrweights(design$strata[, 1], design$cluster[, 1], ..., 
    fay.rho = fay.rho,  : Can't split with odd numbers of PSUs in a stratum

Any help would be greatly appreciated, thanks.

share|improve this question
to work with pisa in R, this will do the correct setup for you :) you'll need to incorporate the multiple imputation in your analysis, which those scripts automate. – Anthony Damico Dec 9 '13 at 12:56
up vote 3 down vote accepted

no need to use as.svrepdesign() if you have a data frame with the replicate weights already :) you can create the replicate weighted design directly from your data frame.

say you have data with a main weight column called mainwgt and 80 replicate weight columns called repwgt1 through repwgt80 you could use this --

yoursurvey <-
    weights = ~mainwgt , 
    repweights = "repwgt[0-9]+" , 
    type = "BRR", 
    data = yourdata ,
    combined.weights = TRUE

-- this way, you don't have to identify the exact column numbers. then you can run normal survey commands like --

svymean( ~variable , design = yoursurvey )

if you'd like another example, here's some example code and an explanatory blog post using the current population survey.

share|improve this answer
is it not necessary to specify type and rho arguments? I suppose one needs to know the specific design of the replicate weights to know? – ako Nov 6 '12 at 8:13
i think type defaults to "BRR" but not 100%. rho is only needed for type = "Fay" example. :) – Anthony Damico Nov 6 '12 at 12:10
this answer is not sufficient if you use any of the "plausible values" variables (which are probably central to any analysis). to use those correctly, use this setup instead. – Anthony Damico Jan 4 '14 at 11:28

I haven't used the PISA data, I used the svprepdesign method last year with the Public Use Microsample from the American Community Survey (US Census Bureau) which also shipped with 80 replicate weights. They state to use the Fay method for that specific survey, so here is how one can construct the svyrep object using that data:


xtabs(~ is5to17youth + withinAMILimit) 
table(is5to17youth + withinAMILimit)

#weighted, mean income by sex by race for select age groups
   pums_p.rep,AGEP > 25 & AGEP <35),na.rm = TRUE,svymean,vartype="se","cv")

In getting this to work, I found the article from A. Damico helpful: Damico, A. (2009). Transitioning to R: Replicating SAS, Stata, and SUDAAN Analysis Techniques in Health Policy Data. The R Journal, 1(2), 37–44.

share|improve this answer
Did you get it working with the PISA data? – ako Oct 16 '12 at 21:28
Using Anthony's solution worked great, thanks! – RickyB Oct 30 '12 at 5:44

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.