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I have these data:

structure(list(type = c("journal", "all", "similar_age_1m", "similar_age_3m", 
"similar_age_journal_1m", "similar_age_journal_3m"), count = c("13972", 
"754555", "22408", "56213", "508", "1035"), rank = c("13759", 
"754043", "22339", "56074", "459", "947"), pct = c("98.48", "99.93", 
"99.69", "99.75", "90.35", "91.50")), .Names = c("type", "count", 
"rank", "pct"), row.names = c(NA, -6L), class = "data.frame")

I'd like to turn it into a single row, with names of columns 2:4 prefixed by the corresponding type. e.g. journal.count, journal.rank ... What is the fastest way to do this? For some reason dcast and reshape are not doing it for me and my solution is a little too cumbersome.

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I don't understand where "count" and "rank" come from –  GSee Sep 28 '12 at 20:53
    
I fixed it and updated the question. –  Maiasaura Sep 28 '12 at 20:56

6 Answers 6

up vote 5 down vote accepted

You mentioned reshape2, so here is a way with that:

library("reshape2")
dcast(melt(dat, id.var="type"), 1~variable+type)

That gives:

  1 count_all count_journal count_similar_age_1m count_similar_age_3m
1 1    754555         13972                22408                56213
  count_similar_age_journal_1m count_similar_age_journal_3m rank_all
1                          508                         1035   754043
  rank_journal rank_similar_age_1m rank_similar_age_3m
1        13759               22339               56074
  rank_similar_age_journal_1m rank_similar_age_journal_3m pct_all pct_journal
1                         459                         947   99.93       98.48
  pct_similar_age_1m pct_similar_age_3m pct_similar_age_journal_1m
1              99.69              99.75                      90.35
  pct_similar_age_journal_3m
1                      91.50

The type and variable are separated with _, instead of ., though.

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+1 Beat me to it. –  joran Sep 28 '12 at 21:13
    
Awesome! You've solved an age old problem for me where I can never unmelt data back to the original form because the formulas always seek a 3rd variable. –  Maiasaura Sep 28 '12 at 21:15
    
This also gives different names than requested, but +1 for giving the OP a dcast fix –  GSee Sep 28 '12 at 21:18
    
I knew Brian Diggs would have a reshape answer :) +1 –  Tyler Rinker Sep 28 '12 at 21:26

Here's another way:

y <- as.numeric(as.matrix(x[-1])) # flatten the data.frame
names(y) <- as.vector(outer(x[['type']], names(x)[-1], paste, sep='.'))
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works once I add t(data.frame(y)). Elegant answer. –  Maiasaura Sep 28 '12 at 21:11
    
This works if the OP doesn't care if the results are in the same order as shown in the question. –  GSee Sep 28 '12 at 21:13

Here's a solution using expand.grid to get the names.

To get the data, first, subset to remove the first column which contains names. Then, transpose and convert to numeric.

> eg <- expand.grid(colnames(x[, -1]), x[, 1])
> setNames(as.numeric(t(x[, -1])), paste(eg[[2]], eg[[1]], sep="."))
               journal.count                 journal.rank 
                    13972.00                     13759.00 
                 journal.pct                    all.count 
                       98.48                    754555.00 
                    all.rank                      all.pct 
                   754043.00                        99.93 
        similar_age_1m.count          similar_age_1m.rank 
                    22408.00                     22339.00 
          similar_age_1m.pct         similar_age_3m.count 
                       99.69                     56213.00 
         similar_age_3m.rank           similar_age_3m.pct 
                    56074.00                        99.75 
similar_age_journal_1m.count  similar_age_journal_1m.rank 
                      508.00                       459.00 
  similar_age_journal_1m.pct similar_age_journal_3m.count 
                       90.35                      1035.00 
 similar_age_journal_3m.rank   similar_age_journal_3m.pct 
                      947.00                        91.50 
share|improve this answer
    
Oops. I didn't realize you wanted a data.frame –  GSee Sep 28 '12 at 21:24
#assuming your data is called "test"
result <- as.data.frame(matrix(t(test[-1]),nrow=1),stringsAsFactors=FALSE)
names(result) <- as.vector(t(outer(unique(test$type),names(test[-1]),paste,sep=".")))

str(result)
'data.frame':   1 obs. of  18 variables:
 $ journal.count               : chr "13972"
 $ journal.rank                : chr "13759"
 $ journal.pct                 : chr "98.48"
 $ all.count                   : chr "754555"
 $ all.rank                    : chr "754043"
 $ all.pct                     : chr "99.93"
 $ similar_age_1m.count        : chr "22408"
 $ similar_age_1m.rank         : chr "22339"
 $ similar_age_1m.pct          : chr "99.69"
 $ similar_age_3m.count        : chr "56213"
 $ similar_age_3m.rank         : chr "56074"
 $ similar_age_3m.pct          : chr "99.75"
 $ similar_age_journal_1m.count: chr "508"
 $ similar_age_journal_1m.rank : chr "459"
 $ similar_age_journal_1m.pct  : chr "90.35"
 $ similar_age_journal_3m.count: chr "1035"
 $ similar_age_journal_3m.rank : chr "947"
 $ similar_age_journal_3m.pct  : chr "91.50"
share|improve this answer
    
nice, but got the names backwards. –  GSee Sep 28 '12 at 21:16
1  
whoops... fixed it now –  thelatemail Sep 28 '12 at 21:19

Assuming you are OK with adding a dummy "time" variable for the reshaping, you can do this easily with base R also. Assuming your data.frame is called:

mydf$id <- 1
(mydfw <- reshape(mydf, direction = "wide", idvar="id", timevar="type"))
#   id count.journal rank.journal pct.journal count.all rank.all pct.all
# 1  1         13972        13759       98.48    754555   754043   99.93
#   count.similar_age_1m rank.similar_age_1m pct.similar_age_1m
# 1                22408               22339              99.69
#   count.similar_age_3m rank.similar_age_3m pct.similar_age_3m
# 1                56213               56074              99.75
#   count.similar_age_journal_1m rank.similar_age_journal_1m
# 1                          508                         459
#   pct.similar_age_journal_1m count.similar_age_journal_3m
# 1                      90.35                         1035
#   rank.similar_age_journal_3m pct.similar_age_journal_3m
# 1                         947                      91.50

Cleanup is not too bad either, if you want to reorder your columns.

mydfw <- mydfw[, unlist(sapply(names(mydf), grep, names(mydfw)))]
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Assuming your data frame is called dat here's a solution. This is a bit crude and may not be what you're after:

dat2 <- data.frame(matrix(unlist(lapply(1:nrow(dat), function(i) dat[i, -1])), nrow=1))
colnames(dat2) <- paste0(rep(dat[, 1], each=ncol(dat)-1), ".", 1:(ncol(dat)-1)) 
dat2

If it doesn't have to be a data frame this could work too:

dat3 <- as.numeric(unlist(lapply(1:nrow(dat), function(i) dat[i, -1])))
names(dat3) <- paste0(rep(dat[, 1], each=ncol(dat)-1), ".", 1:(ncol(dat)-1)) 
dat3
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