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I have survey data that I am working on. I need to make some tables and regression analyses on the data. After attaching the data, this is the code I use for tables for four variables:

ftable(var1, var2, var3, var4)

And this is the regression code that I use for the data:

logit.1 <- glm(var4 ~ var3 + var2 + var1, family = binomial(link = "logit")) summary(logit.1)

So far so good for the unweighted analyses. But how can I do the same analyses for the weighted data? Here is some additional info: There are four variables in the dataset that reflect the sampling structure. These are

strat: stratum (urban or (sub-county) rural).

clust: batch of interviews that were part of the same random walk

vill_neigh_code: village or neighbourhood code

sweight: weights

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1 Answer 1

library(survey)

data(api)

# example data set
head( apiclus2 )

# instead of var1 - var4, use these four variables:
ftable( apiclus2[ , c( 'sch.wide' , 'comp.imp' , 'both' , 'awards' ) ] )

# move it over to x for faster typing
x <- apiclus2


# also give x a column of all ones
x$one <- 1

# run the glm() function specified.
logit.1 <-
    glm( 
        comp.imp ~ target + cnum + growth , 
        data = x ,
        family = binomial( link = 'logit' )
    )

summary( logit.1 )

# now create the survey object you've described
dclus <-
    svydesign(
        id = ~dnum + snum , # cluster variable(s)
        strata = ~stype ,   # stratum variable
        weights = ~pw ,     # weight variable
        data = x ,
        nest = TRUE
    )

# weighted counts
svyby( 
    ~one , 
    ~ sch.wide + comp.imp + both + awards , 
    dclus , 
    svytotal 
)


# weighted counts formatted differently
ftable(
    svyby( 
        ~one , 
        ~ sch.wide + comp.imp + both + awards , 
        dclus , 
        svytotal ,
        keep.var = FALSE
    )
)


# run the svyglm() function specified.
logit.2 <-
    svyglm( 
        comp.imp ~ target + cnum + growth , 
        design = dclus ,
        family = binomial( link = 'logit' )
    )

summary( logit.2 )
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