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I'm having trouble rearranging the following data frame:

dat1 <- data.frame(
    name = rep(c("firstName", "secondName"), each=4),
    numbers = rep(1:4, 2),
    value = rnorm(8)
    )

I want to reshape it so that each unique "name" variable is a rowname, with the "values" as observations along that row and the "numbers" as colnames. Sort of like this:

              1      2      3      4
firstName   value  value  value  value
secondName  value  value  value  value

I've looked at 'melt' and 'cast' and a few other things, but none seem to do the job.

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possible duplicate of Reshape three column data frame to matrix –  Frank Oct 8 '13 at 20:53
    
@Frank: this is a much better title. long-form and wide-form are the standard terms used. The other answer cannot be found by searching on those terms. –  smci Apr 11 '14 at 5:21
    
@smci Having a better title is not a good reason not to link the questions, is it? If the questions are essentially the same, it's better for future visitors that they be linked so that all the answers can be found easily. You could mark the duplicate in the other direction instead, I suppose... Also, I do not know why you have made new tags here. –  Frank Apr 11 '14 at 16:49
    
@smci I'm going to go ahead and get rid of these tags. That's the consensus (of two) in the R chat room, but you can take it up there or on meta if you disagree. –  Frank Apr 11 '14 at 18:04
    
^^ @Frank - this answer cannot be found by searching on the terms users are likely to use. It's not a question of aesthetics. –  smci Apr 11 '14 at 21:03

4 Answers 4

up vote 25 down vote accepted

Using reshape function:

reshape(dat1, idvar = "name", timevar = "numbers", direction = "wide")
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4  
+1 and you don't need to rely on external packages, since reshape comes with stats. Not to mention that it's faster! =) –  aL3xa May 5 '11 at 0:07
35  
Good luck figuring out the arguments you need though –  hadley May 5 '11 at 1:40
1  
@hadley, yepp... that's true! =) –  aL3xa May 5 '11 at 9:45

You can do this with the reshape() function, or with the melt() / cast() functions in the reshape package. For the second option, example code is

library(reshape)
cast(dat1, name ~ numbers)
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thank you! I can't believe I didn't see that - I just looked at 'cast' before posting, but couldn't get it to work how I wanted. –  Steve May 4 '11 at 22:45
3  
+1 And use reshape2 for a performance gain. –  Andrie May 6 '11 at 11:56

@Ista beat me by a couple of seconds. There's also: xtabs(value~name+numbers,data=dat1) using your example dataframe.

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The new tidyr package also does this simply, with gather()/spread() being the terms for melt/cast.

library(tidyr)
spread(dat1, key = numbers, value = value)

From github,

tidyr is a reframing of reshape2 designed to accompany the tidy data framework, and to work hand-in-hand with magrittr and dplyr to build a solid pipeline for data analysis.

Just as reshape2 did less than reshape, tidyr does less than reshape2. It's designed specifically for tidying data, not the general reshaping that reshape2 does, or the general aggregation that reshape did. In particular, built-in methods only work for data frames, and tidyr provides no margins or aggregation.

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