Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a data.table with columns p1, p2, ... which contains percentages. I want to compute the quantiles for each columns given a reference variable val. Conceptually, this is like:

quantile(val, p1, type = 4, na.rm = T)
quantile(val, p2, type = 4, na.rm = T)
...

My attempt at using data.table is as follows:

fun <- function(x, y) quantile(y, x, type = 4, na.rm = T)
dt[, c('q1', 'q2') := lapply(.SD, fun), .SDcols = c('p1', 'p2'), by = grp]
where grp is some grouping variable

However, I am having trouble specifying the y variable in a way that keeps it fixed.

I tried the following:

fun <- function(x, y, dt) quantile(dt[, y], x, type = 4, na.rm = T)
dt[, c('q1', 'q2') := lapply(.SD, fun, y, dt), .SDcols = c('p1', 'p2'), by = grp]

But doing it this fashion does not enforce the grouping when the quantiles are computed. It will compute the quantile based on the whole range of the y variable instead of the y within groups. What is the correct way to do this?

EDIT:

Here is a trivial example of just one variable:

> dt <- data.table(y = 1:10, p1 = rep(seq(0.2, 1, 0.2), 2), g = c(rep('a', 5), rep('b', 5)))
> dt
     y  p1 g
 1:  1 0.2 a
 2:  2 0.4 a
 3:  3 0.6 a
 4:  4 0.8 a
 5:  5 1.0 a
 6:  6 0.2 b
 7:  7 0.4 b
 8:  8 0.6 b
 9:  9 0.8 b
10: 10 1.0 b
> fun <- function(x, dt, y) quantile(dt[, y], x, type = 4, na.rm = T)
> dt[, c('q1') := lapply(.SD, fun, dt, y), .SDcols = c('p1'), by = c('g')]
> dt
     y  p1 g q1
 1:  1 0.2 a  2
 2:  2 0.4 a  4
 3:  3 0.6 a  6
 4:  4 0.8 a  8
 5:  5 1.0 a 10
 6:  6 0.2 b  2
 7:  7 0.4 b  4
 8:  8 0.6 b  6
 9:  9 0.8 b  8
10: 10 1.0 b 10

You can see q1 is computed using the entire range of y.

share|improve this question
    
Can you post a reproducible example including what dt contains. Is the variable y really in the same table as the percentages at which you wish to calculate the quantiles? – mnel Nov 26 '13 at 23:41
    
lapply should be used with a function of one argument. If you need two or more, mapply may help. – Frank Nov 26 '13 at 23:51
    
@ mnel: I added a simple example – ezbentley Nov 26 '13 at 23:53
    
@Frank: Could you help to provide an example of how to use mapply in the context of data.table? In particular, if I specify a function with two arguments, how can I tell data.table to loop over one of them while keeping the other one fixed? – ezbentley Nov 27 '13 at 0:00
    
I think standard R recycling works. That is, you can pass a list of length one and another of length n. – Frank Nov 27 '13 at 0:07
up vote 1 down vote accepted

I find the idea that you would store the percentages you require in the same data.table as the data with which you wish to calculate the quantiles very strange, however here is an approach that will work

dt <- data.table(x=10:1,y = 1:10, p1 = rep(seq(0.2, 1, 0.2), 2), g = c(rep('a', 5), rep('b', 5)))


dt[, c('qx','qy') := Map(f = quantile, x = list(x, y), prob = list(p1), type = 4), by = g]

You can use .SDcols on within .SD to select the columns you want

dt[, c('qx','qy') := Map(f = quantile, x = .SD[, .SDcols = c('x','y')], 
                         prob = list(p1), type = 4), by = g]

Or use with =FALSE

dt[, c('qx','qy') := Map(f = quantile, x = .SD[, c('x', 'y'), with = FALSE], 
                          prob = list(p1), type = 4), by = g]
share|improve this answer
    
Thanks. It works great. Do you happen to know how to specify the x by string? I have many columns vars <- c('x1', 'x2', ...., 'x50') and I would like to somehow put this in like x = list(vars) but it didn't work. – ezbentley Nov 27 '13 at 7:39
    
@ezbentley -- use .SD as per my edit. – mnel Nov 27 '13 at 21:36
    
Thanks a lot. I am still learning the tricks of data.table. – ezbentley Nov 27 '13 at 21:55
    
I noticed that using with = FALSE can be about twice as fast compared to using .SDcols inside .SD. Using .SDcols is the recommended approach when using lapply on .SD, but that conclusion does not seem to be true when using .SDcol inside .SD. Do you know why or is this documented somewhere? – ezbentley Nov 28 '13 at 3:30
    
Because using .SDcols in the inner .SD creates .SD twice, and creating .SD is slow. – mnel Nov 28 '13 at 3:36

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.