开发者

Circumventing R's `Error in if (nbins > .Machine$integer.max)`

开发者 https://www.devze.com 2023-02-21 20:10 出处:网络
This is a saga which began with the problem of how to do survey weighting. Now that I appear to be doing that correctly, I have hit a bit of a wall (see previous post for details on the import process

This is a saga which began with the problem of how to do survey weighting. Now that I appear to be doing that correctly, I have hit a bit of a wall (see previous post for details on the import process and where the strata variable came from):

> require(foreign)
> ipums <- read.dta('/path/to/data.dta')
> require(survey)
> ipums.design <- svydesign(id=~serial, strata=~strata, data=ipums, weights=perwt)
Error in if (nbins > .Machine$integer.max) stop("attempt to make a table with >= 2^31 elements") : 
  missing value where TRUE/FALSE needed
In addition: Warning messages:
1: In pd * (as.integer(cat) - 1L) : NAs produced by integer overflow
2: In pd * nl : NAs produced by integer overflow
> traceback()
9: tabulate(bin, pd)
8: as.vector(data)
7: array(tabulate(bin, pd), dims, dimnames = dn)
6: table(ids[, 1], strata[, 1])
5: inherits(x, "data.frame")
4: is.data.frame(x)
3: rowSums(table(ids[, 1], strata[, 1]) > 0)
2: svydesign.default(id = ~serial, weights = ~perwt, strata = ~strata, 
       data = ipums)
1: svydesign(id = ~serial, weights = ~perwt, strata = ~strata, data = ipums)

This error seems to come from the tabulate function, which I hoped would be straightforward enough to circumvent, first by changing .Machine$integer.max

> .Machine$integer.max <- 2^40

and when that didn't work the whole source code of tabulate:

> tabulate <- function(bin, nbins = max(1L, bin, na.rm=TRUE))
{
    if(!is.numeric(bin) && !is.factor(bin))
    stop("'bin' must be numeric or a factor")
    #if (nbins > .Machine$integer.max)
    if (nbins > 2^40) #replacement line
        stop("attempt to make a table with >= 2^31 elements")
    .C("R_tabulate",
       as.integer(bin),
       as.integer(length(bin)),
       as.integer(nbins),
       ans = integer(nbins),
       NAOK = TRUE,
       PACKAGE="base")$ans
}

Neither circumvented the problem. Apparently this is one reason why the ff package was created, but what worries me is the extent to which this is a problem I cannot avoid in R. This post seems to indicate that even if I were to use a package that would avoid this problem, I would only be able to access 2^31 elements at a time. My hope was to use sql (either sqlite or postgresql) to get around the memory problems, but I'm afraid I'll spend a while getting that to work, only to run into the same fundamental limit.

Attempting to switch back to Stata doesn't solve the problem either. Again see the previous post for how I use svyset, but the calculation I would like to run causes Stata to hang:

svy: mean age, over(strata)

Whether throwing more me开发者_如何学编程mory at it will solve the problem I don't know. I run R on my desktop which has 16 gigs, and I use Stata through a Windows server, currently setting memory allocation to 2000MB, but I could theoretically experiment with increasing that.

So in sum:

  1. Is this a hard limit in R?
  2. Would sql solve my R problems?
  3. If I split it up into many separate files would that fix it (a lot of work...)?
  4. Would throwing a lot of memory at Stata do it?
  5. Am I seriously barking up the wrong tree somehow?


  1. Yes, R uses 32-bit indexes for vectors so they can contain no more than 2^31-1 entries and you are trying to create something with 2^40. There is talk of introducing 64-bit indexes but that will be some way off before appearing in R. Vectors have the stated hard limit and that is it as far as base R is concerned.

I am unfamiliar with the details of what you are doing to offer any further advice on the other parts of your Q.

Why do you want to work with the full data set? Wouldn't a smaller sample that can fit in to the restrictions R places on you be just as useful? You could use SQL to store all the data and query it from R to return a random subset of more appropriate size.


Since this question was asked some time ago, I'd like to point that my answer here uses the version 3.3 of the survey package.

If you check the code of svydesign, you can see that the function that causes all the problem is within a check step that looks whether you should set the nest parameter to TRUE or not. This step can be disabled setting the option check.strata=FALSE.

Of course, you shouldn't disable a check step unless you know what you are doing. In this case, you should be able to decide yourself whether you need to set the nest option to TRUE or FALSE. nest should be set to TRUE when the same PSU (cluster) id is recycled in different strata.

Concretely for the IPUMS dataset, since you are using the serial variable for cluster identification and serial is unique for each household in a given sample, you may want to set nest to FALSE.

So, your survey design line would be:

ipums.design <- svydesign(id=~serial, strata=~strata, data=ipums, weights=perwt, check.strata=FALSE, nest=FALSE)

Extra advice: even after circumventing this problem you will find that the code is pretty slow unless you remap strata to a range from 1 to length(unique(ipums$strata)):

ipums$strata <- match(ipums$strata,unique(ipums$strata))


Both @Gavin and @Martin deserve credit for this answer, or at least leading me in the right direction. I'm mostly answering it separately to make it easier to read.

In the order I asked:

  1. Yes 2^31 is a hard limit in R, though it seems to matter what type it is (which is a bit strange given it is the length of the vector, rather than the amount of memory (which I have plenty of) which is the stated problem. Do not convert strata or id variables to factors, that will just fix their length and nullify the effects of subsetting (which is the way to get around this problem).

  2. sql could probably help, provided I learn how to use it correctly. I did the following test:

    library(multicore) # make svy fast!
    ri.ny <- subset(ipums, statefips_num %in% c(36, 44))
    ri.ny.design <- svydesign(id=~serial, weights=~perwt, strata=~strata, data=ri.ny)
    svyby(~incwage, ~strata, ri.ny.design, svymean, data=ri.ny, na.rm=TRUE, multicore=TRUE)
    
    ri <- subset(ri.ny, statefips_num==44)
    ri.design <- svydesign(id=~serial, weights=~perwt, strata=~strata, data=ri)
    ri.mean <- svymean(~incwage, ri.design, data=ri, na.rm=TRUE)
    
    ny <- subset(ri.ny, statefips_num==36)
    ny.design <- svydesign(id=~serial, weights=~perwt, strata=~strata, data=ny)
    ny.mean <- svymean(~incwage, ny.design, data=ny, na.rm=TRUE, multicore=TRUE)
    

    And found the means to be the same, which seems like a reasonable test.

    So: in theory, provided I can split up the calculation by either using plyr or sql, the results should still be fine.

  3. See 2.

  4. Throwing a lot of memory at Stata definitely helps, but now I'm running into annoying formatting issues. I seem to be able to perform most of the calculation I want (much quicker and with more stability as well) but I can't figure out how to get it into the form I want. Will probably ask a separate question on this. I think the short version here is that for big survey data, Stata is much better out of the box.

  5. In many ways yes. Trying to do analysis with data this big is not something I should have taken on lightly, and I'm far from figuring it out even now. I was using the svydesign function correctly, but I didn't really know what's going on. I have a (very slightly) better grasp now, and it's heartening to know I was generally correct about how to solve the problem. @Gavin's general suggestion of trying out small data with external results to compare to is invaluable, something I should have started ages ago. Many thanks to both @Gavin and @Martin.

0

精彩评论

暂无评论...
验证码 换一张
取 消