36

I have a 7 by 31 character matrix called extra4 and its structure looks like this:

> str(extra4)
 chr [1:7, 1:31] "36.88  " " 45.48  " " 52.46  " " 111.31 " " 138.45 " " 121.09 " " 122.62" ...
 - attr(*, "dimnames")=List of 2
  ..$ : chr [1:7] "1990" "1991" "1992" "1993" ...
  ..$ : chr [1:31] "1" "2" "3" "4" ...

After reading similar questions in SO I've tried the following but I've failed:

>matrix(as.numeric(unlist(extra4)),nrow=nrow(extra4))
Warning message:
In matrix(as.numeric(unlist(extra4)), nrow = nrow(extra4)) :
  NAs introduced by coercion

and also I've tried

> class(extra4)<-"numeric"
Warning message:
In class(extra4) <- "numeric" : NAs introduced by coercion

> extra4<-apply(extra4, 1, as.numeric)
Warning messages:
1: In apply(extra4, 1, as.numeric) : NAs introduced by coercion
2: In apply(extra4, 1, as.numeric) : NAs introduced by coercion
3: In apply(extra4, 1, as.numeric) : NAs introduced by coercion
4: In apply(extra4, 1, as.numeric) : NAs introduced by coercion
5: In apply(extra4, 1, as.numeric) : NAs introduced by coercion
6: In apply(extra4, 1, as.numeric) : NAs introduced by coercion
7: In apply(extra4, 1, as.numeric) : NAs introduced by coercion

> extra4<-apply(extra4, 2, as.numeric)
There were 31 warnings (use warnings() to see them)

I've also tried changing the matrix to data frame and then doing sapply(extra4, as.numeric) but this did not work either, and I've also tried writing the data as csv but somehow the output ends up including non-numeric characters.

It's strange because especially after doing the above, only some of the numbers are turned to numeric values. However, I'm sure that all elements are character, because when I compare those which are saved and those which are not, I get

> str(extra4[1,1])
 chr "36.88  "
> str(extra4[1,2])
 chr " 19.11  "

I'm also adding the following to show my data in more detail:

> dput(extra4)
structure(c("36.88  ", " 45.48  ", " 52.46  ", " 111.31 ", 
" 138.45 ", " 121.09 ", " 122.62", " 19.11  ", " 27.97  ", 
" 37.14  ", " 47.68  ", " 60.78  ", " 35.84  ", " 38.64", 
" 56.21  ", " 74.94  ", " 92.3   ", " 118.62 ", " 138.13 ", 
" 104.65 ", " 113.98", " 30.48  ", " 51.54  ", " 61.57  ", 
" 99.87  ", " 80.9   ", " 84.97  ", " 99.34", "20.16  ", 
" 24.76  ", " 27.76  ", " 37.53  ", " 50.53  ", " 28.8   ", 
" 25.06", " 87.73  ", " 98.68  ", " 119.95 ", " 150.74 ", 
" 214.35 ", " 118.5  ", " 129.19", " 32.36  ", " 36.52  ", 
" 42.67  ", " 56.55  ", " 89.22  ", " 49.97  ", " 50.62", 
"35.09  ", " 40.77  ", " 48.43  ", " 82.61  ", " 120.1  ", 
" 72.43  ", " 76.69", " 47.21  ", " 67.25  ", " 78.62  ", 
" 66.64  ", " 83.78  ", " 127.79 ", " 154.11", " 86.1   ", 
" 127.59 ", " 164.43 ", " 249.32 ", " 312.01 ", " 272.09 ", 
" 265.68", " 83.75  ", " 118.41 ", " 171.52 ", " 229.27 ", 
" 241.63 ", " 201    ", " 213.01", " 36.63  ", " 52.1   ", 
" 66.03  ", " 101.38 ", " 126.71 ", " 95.46  ", " 110.03", 
" 57.5   ", " 75.72  ", " 101.31 ", " 147.5  ", " 171.01 ", 
" 148.66 ", " 167.93", " 29.56  ", " 38.37  ", " 48.8   ", 
" 65.5   ", " 84.77  ", " 75.2   ", " 81.27", " 77.28  ", 
" 93.7   ", " 119.62 ", " 247    ", " 301.76 ", 
" 222.52 ", " 244.46", " 45.6   ", " 54.32  ", " 87.81  ", 
" 132.93 ", " 163.62 ", " 152.99 ", " 170.85", " 27.13  ", 
" 36.96  ", " 48.94  ", " 80.01  ", " 124.07 ", " 93.49  ", 
" 105.57", " 54.55  ", " 85.93  ", " 102.3  ", " 122.7  ", 
" 168.36 ", " 151.79 ", " 169.65", " 86.19  ", " 121.82 ", 
" 191.7  ", " 247.75 ", " 260.23 ", " 196.48 ", " 243.06", 
"47.35  ", " 60.63  ", " 76.4   ", " 93.04  ", " 102.13 ", 
" 98.29  ", " 86.27", " 10.93  ", " 13.33  ", " 16.82  ", 
" 18.2   ", " 23.48  ", " 16.52  ", " 16.19", "   NA   ", 
"  NA    ", "   NA   ", "  NA    ", " 69.46  ", 
" 54.22  ", " 60.16", " 60.93  ", " 89.86  ", " 141.85 ", 
" 207.9  ", " 182.79 ", " 159.1  ", " 159.46", " 15.37  ", 
" 18.48  ", " 24.33  ", " 38.37  ", " 45.87  ", " 34.86  ", 
" 31.96", " 34.05  ", " 40.1   ", " 55.02  ", " 58.31  ", 
" 86.89  ", " 65.68  ", " 65.68", "1.51   ", " 0.93   ", 
" 1      ", " 1.78   ", " 2.8    ", " 1.56   ", 
" 1.41", " 27.15  ", " 31.37  ", " 39.46  ", " 40.33  ", 
" 61.86  ", " 45.18  ", " 57.71", " 14.74  ", " 16.3   ", 
" 25.06  ", " 31.74  ", " 37.39  ", " 27.18  ", " 30.49", 
" 3.59   ", " 4.86   ", " 5.67   ", " 6.36   ", 
" 7.6    ", " 4.8    ", " 5.5", "4.73   ", " 5.68   ", 
" 7.3    ", " 8.53   ", " 11.03  ", " 8.44   ", 
" 9.84", "16.76  ", " 24.83  ", " 32.66  ", " 46.22  ", 
" 48.01  ", " 43.44  ", " 48.29"), .Dim = c(7L, 31L), .Dimnames = list(
    c("1990", "1991", "1992", "1993", "1994", "1995", "1996"), 
    c("1", "2", "3", "4", "5", "6", "7", "8", "9", "10", "11", 
    "12", "13", "14", "15", "16", "17", "18", "19", "20", "21", 
    "22", "23", "24", "25", "26", "27", "28", "29", "30", "31"
    )))

sessionInfo() gave the following:

    > sessionInfo()
R version 3.0.0 (2013-04-03)
Platform: x86_64-apple-darwin10.8.0 (64-bit)

locale:
[1] en_US.UTF-8/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8

attached base packages:
[1] stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
[1] gdata_2.13.2

loaded via a namespace (and not attached):
[1] gtools_2.7.1 tools_3.0.0 
6
  • what did you expect sapply(extra4, as.numeric()) to do?
    – rawr
    Dec 26, 2013 at 22:10
  • 2
    to turn all vectors in extra4 into numeric?
    – halo09876
    Dec 26, 2013 at 22:11
  • I don't know anything about how the extra white spaces appeared in your data in the first place, or if you at some stage have used read.table to read 'corrupt' data. Anyway, I just wish to remind you about the strip.white argument in read.table.
    – Henrik
    Dec 26, 2013 at 22:55
  • @Henrik I'll look into that, thank you. I don't understand either, because I looked back at the excel file and it looks fine. I used read.xls.
    – halo09876
    Dec 26, 2013 at 23:04
  • I think you can use the read.table arguments in read.xls. And: what you see, is not what you get in Excel files...
    – Henrik
    Dec 26, 2013 at 23:09

5 Answers 5

61

There isn't really a problem here at all, not with most options I tried. You are getting Warnings but these pertain to the "NA" strings, which because they aren't NA nor a number stored in a string, R doesn't know what to do with them and changes these to NA. This is all the warning is telling you. Hence

apply(extra4, 2, as.numeric)
sapply(extra4, as.numeric)
class(extra4) <- "numeric"
storage.mode(extra4) <- "numeric"

all work and all warn about the " NA " values (or variants thereof) in column 22 of extra4:

Warning message:
In storage.mode(m) <- "numeric" : NAs introduced by coercion

but these are just warnings and in this case can be ignored. If they trouble you, you could wrap the call in suppressWarnings()

> suppressWarnings(storage.mode(m) <- "numeric")

but that is dangerous as it will stop all warnings, not just the one about the NAs.

19
  • Thank you! I think what you mention is the problem when converting the character. However I get a similar error "Warning message: In storage.mode(extra4) <- "numeric" : NAs introduced by coercion", and then I get a matrix full of NAs even after doing sub() and storage.mode().
    – halo09876
    Dec 26, 2013 at 22:19
  • @Rusuer9000 Then there is something else about your data that we cannot see from the snippet you showed - I read into R the 7 values you do show and the code I showed works. Can you edit your question and include the output from dput(extra4)? That way we can recreate exactly the object you have? Dec 26, 2013 at 22:23
  • I added the 'dput(extra4)'. I think the problem is occurring because the spaces for each element is not the same across all elements. For instance some can be "4 " but some can be "5 ".
    – halo09876
    Dec 26, 2013 at 22:30
  • @Rusuer9000 Thanks, you want gsub() not sub(). Will update the answer Dec 26, 2013 at 22:35
  • 3
    Both sub and gsub are unnecessary here. The command storage.mode(m) <- "numeric" is sufficient. Dec 26, 2013 at 22:38
8
m <- matrix(data = c("1","2","3","4","5","6"), ncol = 2, nrow = 3)

class(m) <- "numeric"
3
  • Please don't post only code as answer, but also provide an explanation what your code does and how it solves the problem of the question. Answers with an explanation are usually more helpful and of better quality, and are more likely to attract upvotes.
    – Tyler2P
    Dec 5, 2020 at 9:55
  • 1
    This is a big brain move, Matheus. @Tyler2P every R object has a class which affects how it behaves. What this does is change the class of the object without having to recompute anything. By doing this the representation shifts from character to numeric. It's brilliant.
    – thus__
    Nov 16, 2021 at 14:19
  • 1
    Wow, I love the simplicity of this answer.
    – andrewj
    Jan 5 at 19:37
5

I think you can just apply:

data.matrix(frame, rownames.force = NA)

Here more info: https://stat.ethz.ch/R-manual/R-devel/library/base/html/data.matrix.html

2
  • 1
    I like the direct nature of this solution!
    – David O
    Jun 13, 2020 at 2:49
  • 1
    Fantastic answer.
    – Ryan Ward
    Oct 19, 2020 at 6:12
4

If you have a character matrix m, i.e.

m <- matrix(data = c("1","2","3","4","5","6"), ncol = 2, nrow = 3)

Simply mapply as.numeric, i.e.

m <- mapply(m, FUN=as.numeric)

And use the data to reconstruct the matrix with the same dimensions as the original m matrix, i.e.

m <- matrix(data=m, ncol=2, nrow=3)
4
  • 1
    I don't think it's a good practice to use mapply unless you actually have multiple arguments.
    – C8H10N4O2
    Feb 14, 2018 at 20:24
  • What are the downsides @C8H10N4O2? I think my solution could be more elegant TBH
    – Will
    Apr 28, 2018 at 10:36
  • 2
    Just use sapply because your function has a single argument. mapply M is for multiple arguments. So you just took an existing answer and used the wrong function for it. -1
    – C8H10N4O2
    Apr 28, 2018 at 11:11
  • My mistake, I thought the m was for matrix, akin to the l in lapply (ie. for list). FYI I didn't take my answer from the previous answer, I just thought mapply was the better function for it. Are there performance issues with using mapply for single argument situations? Does it add unnecessary computation complexity or just a single iteration? Do you know if there is any real difference, i.e. why is it bad practice?
    – Will
    Apr 28, 2018 at 11:17
3

The easiest base R method would be:

m <- matrix(data = c("1","2","3","4","5","6"), ncol = 2, nrow = 3)

m <- apply(m, 2 ,as.numeric)

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