I'm trying to analyze data from the University of Minnesota IPUMS dataset for the 1990 US census in ** R**. I'm using the

`survey`

package because the data is weighted. Just taking the household data (and ignoring the person variables to keep things simple), I am attempting to calculate the mean of `hhincome`

(household income). To do this I created a **survey design object**using the

`svydesign()`

function with the following code:```
> require(foreign)
> ipums.household <- read.dta("/path/to/stata_export.dta")
> ipums.household[ipums.household$hhincome==9999999, "hhincome"] <- NA # Fix missing
> ipums.hh.design <- svydesign(id=~1, weights=~hhwt, data=ipums.household)
> svymean(ipums.household$hhincome, ipums.hh.design, na.rm=TRUE)
mean SE
[1,] 37029 17.365
```

So far so good. However, I get a different standard error if I attempt the same calculation in ** Stata** (using code meant for a different portion of the same dataset):

```
use "C:\I\Hate\Backslashes\stata_export.dta"
replace hhincome = . if hhincome == 9999999
(933734 real changes made, 933734 to missing)
mean hhincome [fweight = hhwt] # The code from the link above.
Mean estimation Number of obs = 91746420
--------------------------------------------------------------
| Mean Std. Err. [95% Conf. Interval]
-------------+------------------------------------------------
hhincome | 37028.99 3.542749 37022.05 37035.94
--------------------------------------------------------------
```

And, looking at another way to skin this cat, the author of `survey`

, has this suggestion for frequency weighting:

```
expanded.data<-as.data.frame(lapply(compressed.data,
function(x) rep(x,compressed.data$weights)))
```

However, I can't seem to get this code to work:

```
> hh.dataframe <- data.frame(ipums.household$hhincome, ipums.household$hhwt)
> expanded.hh.dataframe <- as.data.frame(lapply(hh.dataframe, function(x) rep(x, hh.dataframe$hhwt)))
Error in rep(x, hh.dataframe$hhwt) : invalid 'times' argument
```

Which I can't seem to fix. This may be related to this issue.

So in sum:

- Why don't I get the same answers in
and`Stata`

?`R`

- Which one is right (or am I doing something wrong in both cases)?
- Assuming I got the
`rep()`

solution working, would that replicate's results?`Stata`

- What's the
**right**way to do it? Kudos if the answer allows me to use the`plyr`

package for doing arbitrary calculations, rather than being limited to the functions implemented in`survey`

(`svymean()`

,`svyglm()`

etc.)

# Update

So after the excellent help I've received here and from IPUMS via email, I'm using the following code to properly handle survey weighting. I describe here in case someone else has this problem in future.

## Initial Stata Preparation

Since IPUMS don't currently publish scripts for importing their data into ** R**, you'll need to start from

**,**

`Stata`

**, or**

`SAS`

**. I'll stick with**

`SPSS`

**for now. Begin by running the import script from IPUMS. Then before continuing add the following variable:**

`Stata`

```
generate strata = statefip*100000 + puma
```

This creates a unique integer for each `PUMA`

of the form 240001, with first two digits as the state fip code (24 in the case of Maryland) and the last four a `PUMA`

id which is unique on a per state basis. If you're going to use ** R** you might also find it helpful to run this as well

```
generate statefip_num = statefip * 1
```

This will create an additional variable without labels, since importing `.dta`

files into ** R** apply the labels and lose the underlying integers.

## Stata and `svyset`

As Keith explained, survey sampling is handled by ** Stata** by invoking

`svyset`

.For an individual level analysis I now use:

```
svyset serial [pweight=perwt], strata(strata)
```

This sets the weighting to `perwt`

, the stratification to the variable we created above, and uses the household `serial`

number to account for clustering. If we were using multiple years, we might want to try

```
generate double yearserial = year*100000000 + serial
```

to account for longitudinal clustering as well.

For household level analysis (without years):

```
svyset serial [pweight=hhwt], strata(strata)
```

Should be self-explanatory (though I think in this case serial is actually superfluous). Replacing `serial`

with `yearserial`

will take into account a time series.

## Doing it in `R`

Assuming you're importing a `.dta`

file with the additional `strata`

variable explained above and analysing at the individual letter:

```
require(foreign)
ipums <- read.dta('/path/to/data.dta')
require(survey)
ipums.design <- svydesign(id=~serial, strata=~strata, data=ipums, weights=perwt)
```

Or at the household level:

```
ipums.hh.design <- svydesign(id=~serial, strata=~strata, data=ipums, weights=hhwt)
```

Hope someone finds this helpful, and thanks so much to Dwin, Keith and Brandon from IPUMS.