12

After importing a table from Wikipedia, I have a list of values of the following form:

    > tbl[2:6]
    $`Internet
    Explorer`
     [1] "30.71%" "30.78%" "31.23%" "32.08%" "32.70%" "32.85%" "32.04%" "32.31%" "32.12%" "34.07%" "34.81%"
    [12] "35.75%" "37.45%" "38.65%" "40.63%" "40.18%" "41.66%" "41.89%" "42.45%" "43.58%" "43.87%" "44.52%"

    $Chrome
     [1] "36.52%" "36.42%" "35.72%" "34.77%" "34.21%" "33.59%" "33.81%" "32.76%" "32.43%" "31.23%" "30.87%"
    [12] "29.84%" "28.40%" "27.27%" "25.69%" "25.00%" "23.61%" "23.16%" "22.14%" "20.65%" "19.36%" "18.29%"

I am trying to get rid of the percentage signs, in order to convert the data to numeric form.

Is there a quicker way to clean this data than going for a vectorization? My current code follows:

    data <- lapply(tbl[2:6], FUN = function(x) as.numeric(gsub("%", "", x)))

The data eventually become a data frame, but I could not get gsub to work properly across all elements of a data frame. Is there a way to gsub() each element of a data frame?

The code for the project is online, with results. Thanks in advance!

6
  • 1
    That is more likely just a list than a dataframe. And ... lapply will also work with dataframes since they are actually lists with special attributes.
    – IRTFM
    Feb 14, 2013 at 10:52
  • It is a list. But gsub does not work as I need it to on it (lapply works fine).
    – Fr.
    Feb 14, 2013 at 10:55
  • 1
    Because data.frames are special lists and you have a tested method for lists, this would have almost surely worked: dfrm <- as.data.frame(lapply(tbl[2:6], FUN = function(x) as.numeric(gsub("%", "", x))) )
    – IRTFM
    Feb 14, 2013 at 11:42
  • Indeed, that would work, but I am trying to go without vectorization, staying at the level of as. functions to get the data in shape for cleaning. Your argument is otherwise entirely correct.
    – Fr.
    Feb 14, 2013 at 20:08
  • @BondedDust I used lapply with gsub on my data frame and all columns are now converted to factor. Trying to convert back to numeric and saw this post: stackoverflow.com/questions/3418128/… Any other ideas?
    – vagabond
    Oct 24, 2014 at 20:32

3 Answers 3

12

Well I think you could do it the following way, but I don't know if it is better or cleaner than yours :

df <- data.frame(tbl)
df[,-1] <- as.numeric(gsub("%", "", as.matrix(df[,-1])))

Which gives :

R> head(df)
            Date Internet.Explorer Chrome Firefox Safari Opera Mobile
1   January 2013             30.71  36.52   21.42   8.29  1.19  14.13
2  December 2012             30.78  36.42   21.89   7.92  1.26  14.55
3  November 2012             31.23  35.72   22.37   7.83  1.39  13.08
4   October 2012             32.08  34.77   22.32   7.81  1.63  12.30
5 September 2012             32.70  34.21   22.40   7.70  1.61  12.03
6    August 2012             32.85  33.59   22.85   7.39  1.63  11.78
R> sapply(df, class)
             Date Internet.Explorer            Chrome           Firefox 
         "factor"         "numeric"         "numeric"         "numeric" 
           Safari             Opera            Mobile 
        "numeric"         "numeric"         "numeric" 
3
  • This works best for me, it is both shorter and easier to read. I have updated the code to acknowledge it.
    – Fr.
    Feb 14, 2013 at 20:09
  • Ah well, thanks for the credits. I'll put you as co-atuhor of my package in return :)
    – juba
    Feb 15, 2013 at 7:59
  • [off-topic] Thanks! I'm planning more functions like the one I submitted. Most of them are directly inspired by Stata commands that I find most useful to analyse surveys. [on-topic] It happens quite often to have a data frame where all columns but one are formatted the same way. I'm also thinking of coding a little routine that would work a bit like melt (with an id.vars argument) for these kinds of operations.
    – Fr.
    Feb 16, 2013 at 1:57
4

Like juba I'm uncertain if this way is "better or cleaner" but...to act on all elements of a data frame, you can use apply:

# start with data frame, not list
url <- "http://en.wikipedia.org/wiki/Usage_share_of_web_browsers"
# Get the eleventh table.
tbl <- readHTMLTable(url, which = 11, stringsAsFactors = F)

# use apply on the non-date columns
tbl[, 2:7] <- apply(tbl[, 2:7], 2, function(x) as.numeric(gsub("%", "", x)))
0

I would do this by using a for-loop (I know people don't like loops that much but at least it doesn't touch your data structure):

 for (i in 1:length(tbl[2:6])) {
         tbl[,i] <- gsub("%", "", tbl[,i])
 }

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.