# Bootstrap a large data set

I would like to bootstrap a large data set which contains multiple column and row variables. The following is a simplified re-creation of my data set:

``````charDataDiff <- data.frame(c('A','B','C'), matrix(1:72, nrow=9))
``````

Separate the data using the `patchId` as the criteria. This creates three lists: one for each Variable

``````idColor <-  c("A", "B", "C")
``````

Created the function `sampleBoot` to sample the `patchSpectrum`

``````sampleBoot <-  function(nbootstrap=2, patch=3){
return(lapply(1:nbootstrap, function(i)
{patchSpectrum[[patch]][sample(1:nrow(patchSpectrum[[patch]]),replace=TRUE),]}))}
``````

Example:

``````sampleBoot(5,3)
``````

Here is where I am stuck:

1. I need to sample each `patchId` list along with each column variable (which the above "sampleBoot" easily accomplish),
2. Take the median of each `patchId` sampling list iteration, and
3. Create a new population of the medians to calculate parametric parameters. I can do it manually but that would be silly.
-
I don't know why you did not define data<-1:72 ? –  Ali Oct 27 '12 at 22:00
Thank you, you are right –  Ragy Isaac Oct 27 '12 at 23:32
So you may edit your quetion –  Ali Oct 28 '12 at 1:11
Your separation step can be written more simply as `patchSpectrum <- by(charDataDiff, charDataDiff\$varNames, data.frame)`. –  Ken Williams Oct 28 '12 at 4:05

``````do.call(rbind, lapply(sampleBoot(5, 3), function(x) apply(x[-1], 2, median)))