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I would like to use the boot() and functions from library("boot") for very large data sets(~50 000) with type="bca".

If R(number of bootstraps) is too small, it will give the following error:

Error in, conf, index[1L], L = L, t = t.o, t0 = t0.o,  : 
  estimated adjustment 'a' is NA

I wouldn't want it to be too large either.

What is a good number for R? I know it would depend on the size of the data.

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1 Answer 1

up vote 8 down vote accepted

You need a greater number of bootstraps, in general, for confidence intervals than for estimates. I have heard suggestions of 1000 bootstraps for estimates and 10000 for confidence intervals since computing power has increased in the last decade.

The boot() function nowadays has argument parallel which can run the bootstraps on multiple cores, which if compute time is a concern for you, you might look to use to reduce significantly the time it takes to run the analysis on data sets of your size.

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I tried it on data of size 1000 with R= 10000. But it gave the following error: "Error in, conf, index[1L], L = L, t = t.o, t0 = t0.o, : estimated adjustment 'w' is infinite". Does it mean that the R is too big or too small? –  user1562626 Aug 5 '12 at 14:10
The estimated value of the correction required is infinite. Look at the distribution of the bootstrap values; are they very strongly skewed? You might need to do many more than 10,000 to solve the problem. –  Gavin Simpson Aug 5 '12 at 14:30
I noticed that anything less than the sample size throws the error when running boot with bca –  Max Gordon Jul 1 '13 at 6:12

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