Possible Duplicate:

Bootstrap a large data set

I would like to bootstrap a large two-way data set which contains multiple column and row variables. I have to preserve both row and column variables. The result should be a list containing a bootstrap of all column variables for each row variable. I am providing the required code to answer my question but i think it is not elegant. I would appreciate a better and faster code. The following is a simplified re-creation of the two-way data set:

```
rm(list=ls())
data <- 1:72
```

Create a two way matrix data:

```
charDataDiff <- matrix(data, nrow=9,ncol=8)
varNames <- c("A", "B", "C","A", "B", "C","A", "B", "C")
```

Add a character column to the charDataDiff matrix:

```
charDataDiff <- cbind(varNames ,data.frame(charDataDiff))
```

Add column names:

```
colnames(charDataDiff) <- c("patchId","s380","s390","s400","s410","s420","s430","s440","s450")
```

Separate the data using the row-variable "patchId" as the criteria. This creates three lists: one for each Variable

```
idColor <- c("A", "B", "C")
(patchSpectrum <- lapply(idColor, function(idColor) charDataDiff[charDataDiff$patchId==idColor,]))
```

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),]}))}
```

The list "k" answers my question. However, I think my code is slow for a large data set and large bootstrap. I am only bootstrapping 10 iteration for three row variables. A faster more elegant code is appreciated.

```
numBoots <- 10
for (i in 1: numBoots)
k <- lapply(1:3, function(n)
do.call(rbind, lapply(sampleBoot(i, n), function(x) apply(x[-1], 2, median))))
k
```

`k`

is overwritten at each iteration so you are only getting`k`

for`i == numBoots`

. Is that intended? – flodel Oct 28 '12 at 14:21