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I am working on medium size data set, say with 9000 observations sampled from a large data set with 100,000 observations.

Can I use the following set.seed() function to guarantee I get exactly the same subset every time?

set.seed(10000)  

And what is the maximum value I can use with set.seed()?

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2 Answers 2

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From ?set.seed documentation:

seed a single value, interpreted as an integer, or NULL (see ‘Details’).

So the maximum value will be the maximum integer allowed:

.Machine$integer.max
[1] 2147483647

An easy test:

set.seed(2147483647)
set.seed(2147483648)

Error in set.seed(2147483648) : supplied seed is not a valid integer In addition: Warning message: In set.seed(2147483648) : NAs introduced by coercion to integer range

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Why is this of interest to you? Usually you should set a seed only once and the number passed to it should be irrelevant.

Anyway:

help("set.seed")

seed: a single value, interpreted as an integer, or NULL (see ‘Details’).

set.seed(.Machine$integer.max)
set.seed(.Machine$integer.max + 1)
#Error in set.seed(.Machine$integer.max + 1) : 
#  supplied seed is not a valid integer
#In addition: Warning message:
#In set.seed(.Machine$integer.max + 1) :
#  NAs introduced by coercion to integer range

.Machine$integer.max
#[1] 2147483647
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  • You need to set the seed before each sample if you want the same sample each time
    – germcd
    Mar 27, 2018 at 13:46
  • @germcd That's not correct. The sequence of random numbers is always the same starting from the same seed. It's actually a bad practice to set a new seed for each random number because that decreases the randomness.
    – Roland
    Mar 27, 2018 at 13:59
  • the OP said that he wants the same subset each time, which means setting the seed before each sample.
    – germcd
    Mar 27, 2018 at 14:21
  • 1
    There might be some miscommunication here. OP's request only makes some sense if they intend to draw many samples each with its own set.seed. Something like for(i in 1:n) {set.seed(i); x[i] <- rnorm(1)}. That is not something they should do. If you need the same sample from each draw in one and the same R session, you should just store that sample. If you need the same sample in different R sessions, you still need only one seed.
    – Roland
    Mar 27, 2018 at 14:26
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    Yeah, I think there is some miscommunication. I assumed that the op is sampling multiple times in the same session and getting different samples each time.
    – germcd
    Mar 27, 2018 at 14:36

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