# confidence intervals of svyby proportion

I was wondering if anyone had come up with a function that can create confidence intervals out of a svyby object for proportions (in my case a crosstab for a binary item in the survey package). I often compare proportions across groups, and it would be very handy to have a function that can extract confidence intervals (with the survey function svyciprop rather than confint). The example below shows what I'd like to achieve.

``````library(survey)
library(weights)
data(api)
apiclus1\$both<-dummify(apiclus1\$both)[,1]#Create dummy variable
dclus1<-svydesign(id=~dnum, weights=~pw, data=apiclus1, fpc=~fpc)
``````

Create a svyby object which compares proportion of variable "both" across stype

``````b<-svyby(~both, ~stype, dclus1, svymean)
confint(b)#This works, but svyciprop is best in  other cases, especially when proportion is close to 0 or 1
svyciprop(b)#This requires that you specify each level and a design object
``````

Would it be possible to create a function (e.g. byCI(b,method="likelihood") which achieves the same as confint(b) but using svyciprop? It would basically have to go through each level of the svyby object and create a confidence interval. My attempts have been unsuccesful up to now.

There may be another way around this, but I like using svyby() as it's quick and intuitive.

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svyby() has a vartype= argument to specify how you want the sampling uncertainty specified. Use vartype="ci" to get confidence intervals, eg

``````svyby(~I(ell>0),~stype,design=dclus1, svyciprop,vartype="ci",method="beta")
``````

It's easy to check that this gives the same as doing each level by hand, eg,

``````confint(svyciprop(~I(ell>0), design=subset(dclus1,stype=="E"),method="beta"))
``````
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@maycobra i didn't realize this was possible - this obviously makes a lot more sense, you should change the accepted answer :) –  Anthony Damico Jan 2 '13 at 22:20
Thomas, many thanks. –  maycobra Jan 3 '13 at 9:33

interesting.. these two commands should not give the same result.. the first should probably throw an error or a warning:

``````svyby( ~both , ~stype , dclus1 , svyciprop , method = 'likelihood' )
svyby( ~both , ~stype , dclus1 , svymean )
``````

you might want to alert Dr. Lumley to this issue - the code near line 80 of `surveyby.R` could probably be slightly modified to get `svyciprop` working inside `svyby` too.. but i may be overlooking something (and he may have noted it somewhere in the documentation), so be sure to read everything carefully before contacting him about this

anyway, here's a temporary solution that might solve your problem

``````# create a svyby-like function specific for svyciprop
svyciby <-
function( formula , by , design , method = 'likelihood' , df = degf( design ) ){

# steal a bunch of code from the survey package's source
# stored in surveyby.R..
byfactors <- model.frame( by , model.frame( design ) , na.action = na.pass )
byfactor <- do.call( "interaction" , byfactors )
uniquelevels <- sort( unique( byfactor ) )
uniques <- match( uniquelevels , byfactor )
# note: this may not work for all types..
# i only tested it out on your example.

# run the svyciprop() function on every unique combo
all.cis <-
lapply(
uniques ,
function( i ){

svyciprop(
formula ,
design[ byfactor %in% byfactor[i] ] ,
method = method ,
df = df
)
}
)

# transpose the svyciprop confidence intervals
t.cis <- t( sapply( all.cis , attr , "ci" ) )

# tack on the names
dimnames( t.cis )[[1]] <- as.character( sort( unique( byfactor ) ) )

# return the results
t.cis
}

# test out the results
svyciby( ~both , ~stype , dclus1 , method = 'likelihood' )
# pretty close to your b, but not exact (as expected)
confint(b)
# and this one does match (as it should)
svyciby( ~both , ~stype , dclus1 , method = 'mean' , df = Inf )
``````
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