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I do not know if I explained my intentions through the title, but in essence I want to convert

        mean    sd
v1  -32.72  0.565
v2  -50.47  1.543
v3  -30.17  0.9295
v4  -38.56  0.4541
g1  5.649   0.02509
g2  1.672   0.02992
g3  3.139   0.03507
g4  7.169   0.06703
y1  271.1   3.48
y2  123.7   1.81
y3  138.9   2.727
y4  405.5   4.396

to

 v.mean v.sd    g.mean  g.sd    y.mean  y.sd
-32.72  0.565   5.649   0.02509 271.1   3.48
-50.47  1.543   1.672   0.02992 123.7   1.81
-30.17  0.9295  3.139   0.03507 138.9   2.727
-38.56  0.4541  7.169   0.06703 405.5   4.396

I want to do so without using for loop. I feel that there is some reshape function that may do this. I have a large number of datasets with this configuration. So, I wanted to have some vectorization solution... Also, the length can be anything. Here, in the sample data the series length is 4. In addition, I am not picky with the column names. That I can achieve using names(dataframe)=c(....

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3 Answers 3

up vote 5 down vote accepted

There is indeed a function named reshape. Supposing your data.frame is named "data", do the following to get the result you want:

data$group <- substr(rownames(data),1,1)
data$id <- substr(rownames(data),2,2)
result <- reshape(data, v.names=c("mean","sd"), idvar="id", timevar="group", direction="wide")

For details, see ?reshape

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2  
Thanks for illustrating how to extract reshape information from rownames. –  BondedDust Jan 3 '13 at 23:34

using reshap2, we apply acast in a clever melted data.

dat <- read.table(text ='v1  -32.72  0.565
v2  -50.47  1.543
v3  -30.17  0.9295
v4  -38.56  0.4541
g1  5.649   0.02509
g2  1.672   0.02992
g3  3.139   0.03507
g4  7.169   0.06703
y1  271.1   3.48
y2  123.7   1.81
y3  138.9   2.727
y4  405.5   4.396')
colnames(dat) <- c('var','mean','sd')

First I melt my data:

dat.m <- melt(dat)
Using var as id variables
   var variable     value
1   v1     mean -32.72000
2   v2     mean -50.47000
3   v3     mean -30.17000
4   v4     mean -38.56000
5   g1     mean   5.64900

Now I want I need to split the var column to use just the letter of var in the future columns. Usually we use ColSplit but here no visible pattern so I create the columns by hand and I apply acast

dat.m$vv <- substr(dat.m$var,1,1)
dat.m$key <- substr(dat.m$var,2,2)
acast(dat.m[,-1],id ~variable+vv)
  mean_g mean_v mean_y    sd_g   sd_v  sd_y
1  5.649 -32.72  271.1 0.02509 0.5650 3.480
2  1.672 -50.47  123.7 0.02992 1.5430 1.810
3  3.139 -30.17  138.9 0.03507 0.9295 2.727
4  7.169 -38.56  405.5 0.06703 0.4541 4.396
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Here's a very similar approach to @Theodore's answer. Assuming your dataset is called "dat":

reshape(cbind(dat, do.call(rbind, strsplit(rownames(dat), ""))), 
        idvar="2", timevar="1", direction = "wide")
#    2 mean.v   sd.v mean.g    sd.g mean.y  sd.y
# v1 1 -32.72 0.5650  5.649 0.02509  271.1 3.480
# v2 2 -50.47 1.5430  1.672 0.02992  123.7 1.810
# v3 3 -30.17 0.9295  3.139 0.03507  138.9 2.727
# v4 4 -38.56 0.4541  7.169 0.06703  405.5 4.396

In the above:

  • do.call(rbind, strsplit(rownames(dat), "")) creates a two column matrix where the first column is the letters "v", "g", and "y", and the second, the numbers 1 through 4. This step probably oversimplifies similar problems since it only applies to two-character rownames; you would likely have to resort to some regex for more complicated scenarios.
  • cbind(...) integrates this new matrix with your original data.frame; the new column names are simply "1" and "2".
  • Your "time" variable is the new column that contains letters "v", "g", and "y" (the column named "2"); your "id" variable is the new column that contains the numbers 1 through 4 (the column named "1"). Use that information to reshape() your data.

An alternative to using the reshape() function once you've gotten your data to that stage is to use aggregate():

aggregate(cbind(mean, sd) ~ `2`, 
          data = cbind(dat, do.call(rbind, strsplit(rownames(dat), ""))), 
          FUN = I)
  2  mean.1  mean.2  mean.3    sd.1    sd.2    sd.3
1 1 -32.720   5.649 271.100 0.56500 0.02509 3.48000
2 2 -50.470   1.672 123.700 1.54300 0.02992 1.81000
3 3 -30.170   3.139 138.900 0.92950 0.03507 2.72700
4 4 -38.560   7.169 405.500 0.45410 0.06703 4.39600
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