19

Hi I'm trying to name variables using a for loop so I get dynamic names for my variables.

for (i in 1:nX) {
    paste("X",i, sep="")=datos[,i+1]
    next
}
  • 3
    Why are you trying to do that? Use the array instead. – nico Dec 29 '12 at 13:11
  • Hi, I have a data frame with long headers but would like to automatically set my own variables as X1, X2, etc so I can operate with them individually – nopeva Dec 29 '12 at 13:27
  • 6
    Why don't you just do colNames(datos) <- paste("X", i, sep="") then? Then you can access them with datos$X1, datos$X2 etc – nico Dec 29 '12 at 13:29
  • Thanks nico that is a nice solution! – nopeva Dec 29 '12 at 13:38
  • 9
    This is faq 7.21, the most important part of that answer is the last part that says not to do this, use a list or environment. – Greg Snow Dec 29 '12 at 14:34
31

use assign as in:

x <- 1:10

for(i in seq_along(x)){
  assign(paste('X', i, sep=''), x[i])
}
  • Hi David, why do you think is a bad idea? – nopeva Dec 29 '12 at 14:03
  • 2
    @user1228124 Experienced R programmers generally advise against using assign unless you are absolutely forced to. In this case, nico's suggestion of using colnames<- is safer, simpler, and easier to understand. – joran Dec 29 '12 at 14:36
  • plus one, this saved me time – yanes Dec 15 '15 at 20:32
12

It can be a good idea to use assign when there are many variables and they are looked up frequently. Lookup in an environment is faster than in vector or list. A separate environment for the data objects is a good idea.

Another idea is to use the hash package. It performs lookup as fast as environments, but is more comfortable to use.

datos <- rnorm(1:10)
library(hash)
h <- hash(paste("x", 1:10, sep=""), datos)
h[["x1"]]

Here is a timing comparision for 10000 vars that are looked up 10^5 times:

datos <- rnorm(1:10000)
lookup <- paste("x", sample.int(length(datos), 100000, replace=TRUE), sep="")

# method 1, takes 16s on my machine
names(datos) <- paste("x", seq_along(datos), sep="")
system.time(for(key in lookup) datos[[key]])

# method 2, takes 1.6s on my machine
library(hash)
h <- hash(paste("x", seq_along(datos), sep=""), datos)
system.time(for(key in lookup) h[[key]])

# method 3, takes 0.2s on my machine
e <- new.env()
for(i in seq_along(datos)){
  assign(paste('x', i, sep=''), datos[i], envir=e)
}
system.time(for(key in lookup) e[[key]])

However, the vectorized version of method 1 is the fastest, but is not always applicable

# method 4, takes 0.02s
names(datos) <- paste("x", seq_along(datos), sep="")
system.time(datos[lookup])

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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