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What's your favorite one-liner in R?

Include a short companion example, and limit to one tip per post, please. Note, ; is cheating.

Example: calculate x[i] / x[i-1] for a vector x,

x <- 1:10
Reduce("/", as.data.frame(embed(x, 2)))

(collected from R-help, I forget who/when)

Edit: after some initial controversy, it looks like the question is now reopen for entries.

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locked by Robert Harvey Oct 5 '11 at 3:02

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closed as not a real question by user7116, BlueRaja - Danny Pflughoeft, Kirk Woll, dmckee, Graviton Jun 8 '11 at 1:05

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

4  
Why is this subjective and argumentative? Its either one line or it isn't and it does not seem argumentative to me either. –  G. Grothendieck Jun 6 '11 at 0:58
3  
Out of curiosity, had I phrased it "I'm looking for a concise piece of R code, limited to one line, yet providing a most elaborate example of R's functional programming paradigm in manipulating data."; would that have fit in? –  baptiste Jun 6 '11 at 1:38
13  
The most upvoted question in the R label is "What statistics should a programmer (or computer scientist) know?" and the second most upvoted one is "What is the most useful R trick?". If they are acceptable then I think this one should be too. –  G. Grothendieck Jun 6 '11 at 1:54
3  
Now that this question is open again, it should be CW cause you won't get a single best anwser –  Sacha Epskamp Jun 6 '11 at 10:09
3  
Voted to close, not a real question. Please put this on your blog instead. –  user7116 Jun 6 '11 at 16:41
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17 Answers 17

If you want to record the time that you created a file in its name (perhaps to make it unique, or prevent overwriting), then try this one-line function.

timestamp <- function(format = "%y%m%d%H%M%S")
{
  strftime(Sys.time(), format)
}

Usage is, e.g.,

write.csv(
   some_data_frame, 
   paste("some data ", timestamp(), ".csv", sep = "")
)
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+1 Handy! Thanks for sharing. –  baptiste Jun 6 '11 at 10:34
    
+1 Nice trick to manage redundant results. –  Shreyas Karnik Jun 6 '11 at 14:45
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Get odd or even indices.

odds <- function(x) seq_along(x) %% 2 > 0
evens <- function(x) seq_along(x) %% 2 == 0

Usage is, e.g.,

odds(1:5)
evens(1:5)
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1  
Or you could do the same without a one-liner with gtools pacakge by calling odd() and even() :) –  daroczig Jun 6 '11 at 11:39
7  
Or using recycling seq_len(5)[c(TRUE, FALSE)] –  Martin Morgan Jun 6 '11 at 12:28
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I often need fake data to illustrate, say, a regression problem. Instead of

X <- replicate(2, rnorm(100))
y <- X[,1] + X[,2] + rnorm(100)
df <- data.frame(y=y, X=X)

we can use

df <- transform(X <- as.data.frame(replicate(2, rnorm(100))), 
                y = V1+V2+rnorm(100))

to generate two uncorrelated predictors associated to the outcome y.

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The one-liner is cute code, but I think the three line method is easier to understand. –  Richie Cotton Jun 6 '11 at 13:03
    
@Richie Hey, but the OP ask for one-line :-) –  chl Jun 6 '11 at 13:24
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Removing NaNs - which are a nuisance every once in a while - from a vector or dataframe (found somewhen on R-help)

is.na(x) <- is.na(x)

Example:

> x <- c(1, NaN, 2, NaN, 3, NA)
> is.na(x) <- is.na(x)
> x
[1]  1 NA  2 NA  3 NA
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Convert Excel dates to R dates. Answer adapted from code by Paul Murrell.

excel_date_to_r_date <- function(excel_date, format)
{
  #excel_date is the number of days since the 0th January 1900.  See
  #http://www.stat.auckland.ac.nz/~paul/ItDT/HTML/node67.html
  strftime(as.Date(as.numeric(excel_date) - 2, origin = "1900-01-01"), format)
}

Usage is, e.g.,

excel_date_to_r_date(40700, "%d-%m-%Y")
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Did you check whether it works the same for Windows and Mac? –  chl Jun 6 '11 at 13:25
    
That minus 2 was killing me in some work I'm doing. So glad I stumbled on this. –  JD Long Jun 6 '11 at 14:36
    
@chl: Good point. I think, for a Mac, you can just change the origin value to 1904-01-01 and don't subtract the 2. Volunteers with Macs appreciated to test this. –  Richie Cotton Jun 6 '11 at 17:34
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Not quite what you are after, but fitting a multivariate linear regression model in one line is great:

lm(y ~ x1 + x2)
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Reduce() is a new kid on the block. The same can be done using do.call(), and is a little bit quicker (on my system at least):

do.call("/", as.data.frame(embed(1:10, 2)))

R> do.call("/", as.data.frame(embed(1:10, 2)))
[1] 2.000000 1.500000 1.333333 1.250000 1.200000 1.166667 1.142857 1.125000
[9] 1.111111
R> Reduce("/", as.data.frame(embed(1:10, 2)))
[1] 2.000000 1.500000 1.333333 1.250000 1.200000 1.166667 1.142857 1.125000
[9] 1.111111
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Thanks, that makes good sense, more than Reduce in fact. –  baptiste Jun 6 '11 at 9:35
2  
exp(diff(log(x)))) is even little bit quicker –  Wojciech Sobala Jun 6 '11 at 10:21
2  
@Wojciech Sobala Neat, though you might run into problems with negative values, I'd imagine. –  baptiste Jun 6 '11 at 10:28
    
@baptiste if you don't exclude negative values in x you can't exclude 0, so you have problem anyway. –  Wojciech Sobala Jun 6 '11 at 11:46
    
@baptiste: "imagine" -- get it? –  sehe Jun 6 '11 at 22:28
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Function summarize the amount of missing data for each variable in a data frame. Returns a list.

propmiss <- function(dataframe) lapply(dataframe,function(x) data.frame(nmiss=sum(is.na(x)), n=length(x), propmiss=sum(is.na(x))/length(x)))

Not a one-liner, but returning this info as a data frame is more useful.

propmiss <- function(dataframe) {
    m <- sapply(dataframe, function(x) {
        data.frame(
            nmiss=sum(is.na(x)), 
            n=length(x), 
            propmiss=sum(is.na(x))/length(x)
        )
    })
    d <- data.frame(t(m))
    d <- sapply(d, unlist)
    d <- as.data.frame(d)
    d$variable <- row.names(d)
    row.names(d) <- NULL
    d <- cbind(d[ncol(d)],d[-ncol(d)])
    return(d[order(d$propmiss), ])
}
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Wipes the slate clean removes all objects from the memory.

rm(list=ls(all=TRUE))

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Multiple columns edit is one of my favourite.

E.g. to change all numeric columns to characters:

X <- iris
X[id] <- lapply(X[id <- sapply(X, is.numeric)], as.character)

or standardize them

X[id] <- lapply(X[id <- sapply(X, is.numeric)], scales)
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I'd say look at plyr for a package full of slick oneliners!

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an example in particular? (I know I have mine) –  baptiste Jun 6 '11 at 10:25
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Well, not really a oneliner but textConnection is great!

x <- "1,3
1,a
1,g,4
3,d,6
2,X,1,3
2,K"
read.table(textConnection(x), sep=",", header=FALSE, na.strings="", fill=TRUE)

result

  V1 V2 V3 V4
1  1  3 NA NA
2  1  a NA NA
3  1  g  4 NA
4  3  d  6 NA
5  2  X  1  3
6  2  K NA NA
> 
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2  
one annoying side-effect of using textConnection in such a one-liner is that you get warnings when the connection closes later on. I usually have three lines; one to open, one to read, one to close the connection. –  baptiste Jun 6 '11 at 10:31
    
@baptiste you can make it a one line by assigning inline read.table(con <- textConnection(x), sep=",",.... and then tag ; close(con) on the end of the one-liner to close the connection. Ugly as but... –  Gavin Simpson Jun 6 '11 at 10:36
1  
@Gavin Simpson yeah, I suppose, though I wouldn't do that. Also, "real" one-liners should not use ; i reckon. –  baptiste Jun 6 '11 at 10:40
    
See text_to_table for a convenience wrapper to textConnection. stackoverflow.com/questions/3936285/… –  Richie Cotton Jun 6 '11 at 13:09
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Here's another tip collected from R-help (if memory serves, by Romain François).

Remove existing variables from the workspace:

rm( list = Filter( exists, c("a", "b") ) )
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My favorite one-liner can be found in the help pages of the %in% function and is basically its opposite.

f.wo <- function(x, y) x[!x %in% y]

Wrapped up into a nice, small function it comes really handy. E.g.

R> f.wo(c("a", "b", "c"), "b")
[1] "a" "c"
R> f.wo(1:8, c(2,7))
[1] 1 3 4 5 6 8
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1  
Can be made to look more like %nin% by putting this in your profile: "%nin%" <- function(x, y) !(x %in% y) –  Stephen Turner Jun 6 '11 at 21:59
    
@StephenTurner There was question about it: stackoverflow.com/q/5831794/168747. I prefer direct definition of %nin% –  Marek Jun 8 '11 at 14:08
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Function to read space delimited data from the clipboard

read.cb <- function(...) read.table(file="clipboard", ...)

e.g.

# read data from the clipboard with a header
d<-read.cb(T) 

#read data from clipboard without header
d<-read.cb()
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Function to convert columns of data in a data frame to factor variables

factorcols <- function(d, ...) lapply(d, function(x) factor(x, ...))

E.g. convert columns 1-4 in data frame d to factor variables

d[1:4] <- factorcols(d[1:4])
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Return a new matrix, where the rows of the original matrix are sorted by columns:

newmat <- t(apply(orimat, 1, sort))
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