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If possible, please help me speed-up the bootstrap code below.

sampleOne   <- function(x) sample(x, replace = TRUE)
sampleMany  <- function(x, n) replicate(n, sampleOne(x), simplify = FALSE)
listMeans <- function(x, n) lapply(sampleMany(x, n), mean)
bootData <- function(x,n) do.call(rbind, listMeans(x,n))
sampleSize <- 100000
numBoots <- 1000
# Left Skewed distribution # shape1 = a and shape2 = b
popSkewLeft <- rbeta(sampleSize, shape1 = 5, shape2 = 1)
skewLeftbootData <- bootData(popSkewLeft, numBoots)
(bootSd <- sd(skewLeftbootData) * sqrt(sampleSize))

I know that I can use the boot package but my objective here is to hone my skills in base R

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closed as off-topic by Blue Magister, Alex Brown, Mark J. Bobak, Dhaval Marthak, jb. Jan 15 '14 at 9:03

  • This question does not appear to be about programming within the scope defined in the help center.
If this question can be reworded to fit the rules in the help center, please edit the question.

The advantages (or not) of bootstrapping is not a programming question, but a statistics question. This is definitely off topic here, but might be on topic at crossvalidated.com. –  joran Oct 1 '13 at 21:13
Thank you, i will post this question on crossvalidated.com –  Ragy Isaac Oct 1 '13 at 23:13
This question appears to be off-topic because it is about statistics and belongs on CrossValidated. –  Blue Magister Jan 14 '14 at 19:17

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