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A not-uncommon situation in generating data.frames (particularly for SO questions which are not reproducible) is when one column depends on the (typically random) values of another. For instance, if one wants a data.frame to test regression on, it would be great to have some noisy linear dependence:

n <- 100
x <- runif(n)
dat <- data.frame( x=x, y=x+runif(n) )
plot(y~x,data=dat)

y vs x

However, I'd like to do it in one line (the above would count as two lines, the first creating x, the second using x in the data.frame assignment), ideally without depositing anything in the global environment.

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6 Answers

up vote 4 down vote accepted

Here's an easy solution with within:

within(data.frame(x = runif(n)), y <- x + runif(n))

This command does not assign y to the global environment (or parent frame).

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Lots of creative answers, but I think this and @WojciechSobala come the closest to how I think about the world. –  Ari B. Friedman Dec 3 '12 at 18:14
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Here's a solution that suffers neither of the two downsides you ID'd.

library(data.table)
n <- 100

dat <- data.table(x = runif(n))[, y := x + runif(n)]

Its own downsides are:

  1. Requires loading an entire package.
  2. Becomes a bit uglier (i.e. data.frame(data.table(......)) if you want a "plain-old" data.frame returned.
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Here is one way that does not break the "one-assignment-per-line" rule a lot of programmers like to stick to:

within(data.frame(row.names = 1:n), {x = runif(n); y = x + runif(n)})

where data.frame(row.names = 1:n) is used to create an empty data.frame with the right number of rows, otherwise within would complain.

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This solution depends on x already being created. Otherwise, R would complain. –  Sven Hohenstein Dec 2 '12 at 13:20
    
@SvenHohenstein, you are correct, I missed that. I replaced transform with a similar within version that does not have the issue. –  flodel Dec 2 '12 at 13:48
1  
plyr::mutate works the same way as a transform, except that you can refer to columns you just created. –  hadley Dec 2 '12 at 15:03
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set.seed will be needed to make the random numbers reproducible in any case but modulo that try this:

set.seed(123)
dat <- transform(data.frame(x = runif(10)), y = x + runif(10))

This gives:

> dat
           x         y
1  0.2875775 1.2444109
2  0.7883051 1.2416393
3  0.4089769 1.0865476
4  0.8830174 1.4556508
5  0.9404673 1.0433920
6  0.0455565 0.9453815
7  0.5281055 0.7741932
8  0.8924190 0.9344786
9  0.5514350 0.8793557
10 0.4566147 1.4111184
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Here's a custom function that works like transform (or plyr::mutate), but doesn't require an initial data frame. (Obviously this doesn't really help with the OP's question since no one will have this function, but I thought others might be interested anyway)

create <- function(...) {
  .data <- list()

  cols <- as.list(substitute(list(...))[-1])
  cols <- cols[names(cols) != ""] # Silently drop unnamed columns

  for(col in names(cols)) {
    .data[[col]] <- eval(cols[[col]], .data, parent.frame())
  }
  as.data.frame(.data)
}
create(x = runif(1:10), y = x + 1)
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Here's the best I've come up with. It uses something that is a common mistake from beginner R folks as a trick to write more compact code.

dat <- data.frame( x<-runif(n), y=x+runif(n) )

This is similar in spirit to @Tommy's tip on CodeGolf.SE.

Downsides are:

  1. Potentially confusing. Especially so since it's such a common mistake, and might be confused by an expert code reviewer with a mistake in this case.
  2. Deposits x in the parent (global, in most use cases) environment, where it might overwrite some other variable.

Edit

@WojciechSobala's solution in the comment deserves highlighting here. Simply wrap the above expression in local:

dat <- local( data.frame( x<-runif(n), y=x+runif(n) ) )

Since local works just like evalq (e.g. it evaluates an expression in a given environment) except that it by default evaluates in a new environment via new.env(), x gets created in this new environment not in the global environment.

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you can modify your code to remove downsides: dat <- local({data.frame(x= x<-runif(n), y= x+runif(n))}) –  Wojciech Sobala Dec 2 '12 at 13:44
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