# R : know table(s), how to calc quantile(s)

s is a large array, just save table(s) in database

``````> table_s
s
1       2 3  4                   5
3000000 1 1  999999999999999999  34
``````

how to calc quantile(s) with table_s in R ?

thanks

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type `?quantile` into the R console –  tim riffe Dec 25 '12 at 3:51
@timriffe There is no `quantile` function for class `table`, and `rep` is unsuitable for such large `times` arguments. Not sure how `?quantile` is of help here. –  Matthew Lundberg Dec 25 '12 at 4:14
oops, quantile doesn't have weights, but Hmisc::wtd.quantile() does. will answer –  tim riffe Dec 25 '12 at 4:21

You can use the quantile function from the Hmisc package, which allows weights.

``````Hmisc::wtd.quantile(as.numeric(names(table_s)),weights = table_s)
``````
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thanks a lot, :) –  abbypan Dec 25 '12 at 15:28

The simplest (but computationally expensive) way I can think of is to re-expand your table into a vector of observations and use the `quantile` function:

``````s <- c(3000000,1,1,999999999999999999,34)
names(s) <- 1:5
quantile(rep.int(as.integer(names(s)),times=s))
#  0%  25%  50%  75% 100%
#   1    4    4    4    5
``````

If you are looking for something faster, then you might need to write your own function.

EDIT: As Matthew Lundberg states in the comments, the code above doesn't work. It will run only if `sum(s)` is less than the maximum possible length of a vector, which is currently 2^31-1 < 10^10.

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2.15.2 does not like that code: `Error in rep.int(as.integer(names(s)), times = s) : invalid 'times' value In addition: Warning message: In rep.int(as.integer(names(s)), times = s) : NAs introduced by coercion` –  Matthew Lundberg Dec 25 '12 at 4:22
Whoops, you're right. I think this does work up as long as the resulting vector is less than the maximum length of a vector in R: 2^31-1, which is less than 10^10. –  Blue Magister Dec 25 '12 at 4:40