32

I have the following data structure (an "atomic vector?") output from daply in plyr, in which I had the function return three different measures for each subject, condition, and item.

x = structure(c(-0.93, 0.39, 0.88, 0.63, 0.86, -0.69, 1.02, 0.29, 0.94, 
0.93, -0.01, 0.79, 0.32, 0.14, 0.13, -0.07, -0.63, 0.26, 0.07, 0.87,
-0.36, 1.043, 0.33, -0.12, -0.055, 0.07, 0.67, 0.48, 0.002, 0.008, 
-0.19, -1.39, 0.98, 0.43, -0.02, -0.15,-0.08, 0.74, 0.96, 0.44, -0.005,
1.09, 0.36, 0.04, 0.09, 0.17, 0.68, 0.51, 0.09, 0.12, -0.05, 0.11,
0.99, 0.62, 0.13, 0.06, 0.27, 0.74, 0.96, 0.45), .Dim = c(5L, 
2L, 2L, 3L), .Dimnames = structure(list(Subject = c("s1", "s2", 
"s3", "s4", "s5"), Cond = c("A", "B"), Item = c("1", "2"), c("Measure1", 
"Measure2", "Measure3")), .Names = c("Subject", "Cond", 
"Item", "")))

I want to change it to look like:

Subject Cond Item Measure1 Measure2 Measure3
     s1    A    1    -0.93   -0.360   -0.005
     s1    A    2    -0.01    -0.19    -0.05 
     s1    B    1    -0.69    0.070     0.17
     s1    B    2    -0.07    -0.15     0.06
     s2    A    1     0.39    1.043    1.090
     s2    A    2     0.79    -1.39     0.11
     s2    B    1     1.02    0.670     0.68
     s2    B    2    -0.63    -0.08     0.27

etc.

Is there an easy way to do this?

1
  • By the way, your data structure is an array. I know that because *aply will always return an array. Also, I know how to use str(x) and read the results.
    – Andrie
    Commented Jun 21, 2012 at 15:41

5 Answers 5

41
Answer recommended by R Language Collective

Use as.data.frame.table().

d0 <- as.data.frame.table(x)
head(d0)

#   Subject Cond Item     Var4  Freq
# 1      s1    A    1 Measure1 -0.93
# 2      s2    A    1 Measure1  0.39
# 3      s3    A    1 Measure1  0.88
# 4      s4    A    1 Measure1  0.63
# 5      s5    A    1 Measure1  0.86
# 6      s1    B    1 Measure1 -0.69

library(tidyr)
d1 <- pivot_wider(data = d0, names_from = "Var4", values_from = "Freq")
head(d1)

#   Subject Cond Item Measure1 Measure2 Measure3
# 1      s1    A    1    -0.93   -0.360   -0.005
# 2      s1    A    2    -0.01   -0.190   -0.050
# 3      s1    B    1    -0.69    0.070    0.170
# 4      s1    B    2    -0.07   -0.150    0.060
# 5      s2    A    1     0.39    1.043    1.090
# 6      s2    A    2     0.79   -1.390    0.110
2
  • 2
    This is also much faster than adply
    – kferris10
    Commented Aug 22, 2016 at 21:42
  • 3
    Base R equivalent of the 2nd step: reshape(d0, idvar = c('Subject', 'Cond', 'Item'), timevar = 'Var4', direction = "wide")
    – nniloc
    Commented Jul 8, 2021 at 20:53
13

Yes, use adply():

adply(x, c(1,2,3))
   Subject Cond Item Measure1 Measure2 Measure3
1       s1    A    1    -0.93   -0.360   -0.005
2       s2    A    1     0.39    1.043    1.090
3       s3    A    1     0.88    0.330    0.360
4       s4    A    1     0.63   -0.120    0.040
5       s5    A    1     0.86   -0.055    0.090
6       s1    B    1    -0.69    0.070    0.170
7       s2    B    1     1.02    0.670    0.680
8       s3    B    1     0.29    0.480    0.510
9       s4    B    1     0.94    0.002    0.090
10      s5    B    1     0.93    0.008    0.120
11      s1    A    2    -0.01   -0.190   -0.050
12      s2    A    2     0.79   -1.390    0.110
13      s3    A    2     0.32    0.980    0.990
14      s4    A    2     0.14    0.430    0.620
15      s5    A    2     0.13   -0.020    0.130
16      s1    B    2    -0.07   -0.150    0.060
17      s2    B    2    -0.63   -0.080    0.270
18      s3    B    2     0.26    0.740    0.740
19      s4    B    2     0.07    0.960    0.960
20      s5    B    2     0.87    0.440    0.450
2
  • 2
    Is there a faster alternative to this?
    – JCran
    Commented Feb 24, 2020 at 11:17
  • 2
    Also, is there an alternative using "base" R ? --> answer by @gjabel (makes much more sense as it's all just basic R). Commented May 15, 2020 at 16:05
4

df = melt(x) gives you something very similar to what you want. Then you could compute the various measure variables from the different levels of measure.

Using the "reshape2" package, try:

dcast(melt(x), Subject + Cond + Item ~ Var4)
1
  • melt is much faster than adply. I have a very large dataset read from a NetCDF file, adply couldn't finish without crashing while melt created my dataframe in less than a second.
    – rrs
    Commented May 15, 2014 at 17:09
4

ftable pretty much gets you where you need to be:

y <- ftable(x)
y
#
#                    Measure1 Measure2 Measure3
# Subject Cond Item                            
# s1      A    1       -0.930   -0.360   -0.005
#              2       -0.010   -0.190   -0.050
#         B    1       -0.690    0.070    0.170
#              2       -0.070   -0.150    0.060
# s2      A    1        0.390    1.043    1.090
#              2        0.790   -1.390    0.110
#         B    1        1.020    0.670    0.680
#              2       -0.630   -0.080    0.270
# s3      A    1        0.880    0.330    0.360
#              2        0.320    0.980    0.990
#         B    1        0.290    0.480    0.510
#              2        0.260    0.740    0.740
# s4      A    1        0.630   -0.120    0.040
#              2        0.140    0.430    0.620
#         B    1        0.940    0.002    0.090
#              2        0.070    0.960    0.960
# s5      A    1        0.860   -0.055    0.090
#              2        0.130   -0.020    0.130
#         B    1        0.930    0.008    0.120
#              2        0.870    0.440    0.450

But, most people would probably prefer their data in a data.frame. Using as.data.frame.matrix extracts the values, but not the row and column names. ftable stores that information in row.vars and col.vars attributes.

attributes(y)$row.vars
# $Subject
# [1] "s1" "s2" "s3" "s4" "s5"
# 
# $Cond
# [1] "A" "B"
# 
# $Item
# [1] "1" "2"

attributes(y)$col.vars
# [[1]]
# [1] "Measure1" "Measure2" "Measure3"

We can use this information to write a function that converts an ftable to a data.frame:

ftable2df <- function(mydata) {
  ifelse(class(mydata) == "ftable", 
         mydata <- mydata, mydata <- ftable(mydata))
  dfrows <- rev(expand.grid(rev(attr(mydata, "row.vars"))))
  dfcols <- as.data.frame.matrix(mydata)
  names(dfcols) <- do.call(
    paste, c(rev(expand.grid(rev(attr(mydata, "col.vars")))), sep = "_"))
  cbind(dfrows, dfcols)
}

Here it is in use directly on your original "x":

ftable2df(x)
#    Subject Cond Item Measure1 Measure2 Measure3
# 1       s1    A    1    -0.93   -0.360   -0.005
# 2       s1    A    2    -0.01   -0.190   -0.050
# 3       s1    B    1    -0.69    0.070    0.170
# 4       s1    B    2    -0.07   -0.150    0.060
# 5       s2    A    1     0.39    1.043    1.090
# 6       s2    A    2     0.79   -1.390    0.110
# 7       s2    B    1     1.02    0.670    0.680
# 8       s2    B    2    -0.63   -0.080    0.270
# 9       s3    A    1     0.88    0.330    0.360
# 10      s3    A    2     0.32    0.980    0.990
# 11      s3    B    1     0.29    0.480    0.510
# 12      s3    B    2     0.26    0.740    0.740
# 13      s4    A    1     0.63   -0.120    0.040
# 14      s4    A    2     0.14    0.430    0.620
# 15      s4    B    1     0.94    0.002    0.090
# 16      s4    B    2     0.07    0.960    0.960
# 17      s5    A    1     0.86   -0.055    0.090
# 18      s5    A    2     0.13   -0.020    0.130
# 19      s5    B    1     0.93    0.008    0.120
# 20      s5    B    2     0.87    0.440    0.450
1
  • 2
    In ftable2df the ifese could be written as if (!inherits(mydata, "ftable")) mydata <- ftable(mydata) Commented Apr 21, 2020 at 2:36
3

You can also use the more generic array2DF, that was introduced in R 4.3.0:

reshape(array2DF(x), idvar = c('Subject', 'Cond', 'Item'), timevar = 'Var4', direction = "wide")

#    Subject Cond Item Value.Measure1 Value.Measure2 Value.Measure3
# 1       s1    A    1          -0.93         -0.360         -0.005
# 2       s2    A    1           0.39          1.043          1.090
# 3       s3    A    1           0.88          0.330          0.360
# 4       s4    A    1           0.63         -0.120          0.040
# 5       s5    A    1           0.86         -0.055          0.090
# 6       s1    B    1          -0.69          0.070          0.170
# 7       s2    B    1           1.02          0.670          0.680
# 8       s3    B    1           0.29          0.480          0.510
# 9       s4    B    1           0.94          0.002          0.090
# 10      s5    B    1           0.93          0.008          0.120
# 11      s1    A    2          -0.01         -0.190         -0.050
# 12      s2    A    2           0.79         -1.390          0.110
# 13      s3    A    2           0.32          0.980          0.990
# 14      s4    A    2           0.14          0.430          0.620
# 15      s5    A    2           0.13         -0.020          0.130
# 16      s1    B    2          -0.07         -0.150          0.060
# 17      s2    B    2          -0.63         -0.080          0.270
# 18      s3    B    2           0.26          0.740          0.740
# 19      s4    B    2           0.07          0.960          0.960
# 20      s5    B    2           0.87          0.440          0.450

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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